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No moment wasted: the primary-care visit for adults with diabetes and low socio-economic status

Published online by Cambridge University Press:  20 May 2015

Shari D. Bolen*
Affiliation:
Department of Medicine, Center for Health Care Research and Policy, Case Western Reserve University, MetroHealth Medical Center, Cleveland, Ohio, USA Department of Epidemiology and Biostatistics, Case Western Reserve University, Cleveland, Ohio, USA
Paulette Sage
Affiliation:
Department of Sociology, Case Western Reserve University, Cleveland, Ohio, USA
Adam T. Perzynski
Affiliation:
Department of Medicine, Center for Health Care Research and Policy, Case Western Reserve University, MetroHealth Medical Center, Cleveland, Ohio, USA
Kurt C. Stange
Affiliation:
Department of Epidemiology and Biostatistics, Case Western Reserve University, Cleveland, Ohio, USA Department of Sociology, Case Western Reserve University, Cleveland, Ohio, USA Department of Family Medicine, Case Western Reserve University, Cleveland, Ohio, USA
*
Correspondence to: Shari Bolen, Assistant Professor of Medicine, Biostatistics and Epidemiology, MetroHealth Medical Center, Case Western Reserve University, Rammelkamp Building R234, 2500 MetroHealth Drive, Cleveland, Ohio 44109, USA. Email: [email protected]
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Abstract

Aim

To better understand the type and range of health issues initiated by patients and providers in ‘high-quality’ primary-care for adults with diabetes and low socio-economic status (SES).

Background

Although quality of care guidelines are straightforward, diabetes visits in primary care are often more complex than adhering to guidelines, especially in adults with low SES who experience many financial and environmental barriers to good care.

Methods

We conducted a qualitative study using direct observation of primary-care diabetes visits at an exemplar safety net practice in 2009–2010.

Findings

In a mainly African American (93%) low-income population with fair cardiovascular control (mean A1c 7.5%, BP 134/81 mmHg, and low-density lipoprotein cholesterol 100 mg/dL), visits addressed a variety of bio-psychosocial health issues [median: 25 problems/visit (range 13–32)]. Physicians most frequently initiated discussions about chronic diseases, prevention, and health behavior. Patients most frequently initiated discussions about social environment and acute symptoms followed by prevention and health behavior.

Conclusions

Primary-care visits by diabetes patients with low SES address a surprising number and diversity of problems. Emerging new models of primary-care delivery and quality measurement should allow adequate time and resources to address the range of tasks necessary for integrating biomedical and psychosocial concerns to improve the health of socio-economically disadvantaged patients.

Type
Research
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/3.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© Cambridge University Press 2015

Introduction

Type 2 diabetes occurs in 1 out of 10 Americans, contributes strongly to excess morbidity and mortality, and accounts for about one in five healthcare dollars spent in the United States (CDC, 2011). African Americans and Hispanic adults have a 66–77% higher prevalence of diagnosed diabetes compared with Caucasians (CDC, 2011), and worse clinical outcomes leading to greater morbidity and mortality from diabetes (AHRQ, 2010). Adults with lower income and less education receive less recommended services (hemoglobin A1c test, dilated eye examination, and foot examination) by an absolute difference ranging from 7 to 18% between the highest and lowest status groups with subsequent worse health outcomes (Samuels et al., Reference Samuels, Bolen, Yeh, Abuid, Marinopoulos, Weiner, McGuire and Brancati2008; AHRQ, 2010). Primary-care physicians are challenged to deliver high-quality preventive and disease-specific care during brief visits by patients, who often have high levels of multimorbid health conditions (Fortin et al., Reference Fortin, Lapointe, Hudon and Vanasse2005) and other diverse healthcare needs (Stange, Reference Stange2009b). This struggle of delivering high-quality care efficiently is further complicated when seeing a high number of uninsured and low-income patients who experience many financial and environmental barriers to good care (Grant et al., Reference Grant, Ashburner, Hong, Chang, Barry and Atlas2011).

Previous research has shown patient, provider, or system factors associated with improved diabetes outcomes, such as better medication adherence, greater medication intensification, fewer competing demands at the office visit, greater access to care, greater patient motivation, and better continuity of care (Grant et al., Reference Grant, Adams, Trinacty, Zhang, Kleinman, Soumerai, Meigs and Ross-Degnan2007; Parchman et al., Reference Parchman, Pugh, Romero and Bowers2007; Simmons et al., Reference Simmons, Lillis, Swan and Haar2007; Bolen et al., Reference Bolen, Samuels, Yeh, Marinopoulos, McGuire, Abuid and Brancati2008; Reference Bolen, Bricker, Samuels, Yeh, Marinopoulos, McGuire, Abuid and Brancati2009; Samuels et al., Reference Samuels, Bolen, Yeh, Abuid, Marinopoulos, Weiner, McGuire and Brancati2008). These studies were limited in their ability to assess the context of care in individual office visits (Grant et al., Reference Grant, Adams, Trinacty, Zhang, Kleinman, Soumerai, Meigs and Ross-Degnan2007; Bolen et al., Reference Bolen, Samuels, Yeh, Marinopoulos, McGuire, Abuid and Brancati2008; Reference Bolen, Bricker, Samuels, Yeh, Marinopoulos, McGuire, Abuid and Brancati2009; Samuels et al., Reference Samuels, Bolen, Yeh, Abuid, Marinopoulos, Weiner, McGuire and Brancati2008), undercounted health issues made solely on billing diagnoses (Beasley et al., Reference Beasley, Hankey, Erickson, Stange, Mundt, Elliott, Weisen and Bobula2004), had recall bias (Simmons et al., Reference Simmons, Lillis, Swan and Haar2007), and were only able to determine perceived psychosocial issues that may impact health (Simmons et al., Reference Simmons, Lillis, Swan and Haar2007). Direct observations of office visits are particularly important when assessing the type and range of health issues discussed at primary-care visits, as recall bias and medical diagnosis coding often substantially undercount the problems addressed at a visit (Beasley et al., Reference Beasley, Hankey, Erickson, Stange, Mundt, Elliott, Weisen and Bobula2004). In addition, direct observation allows documentation of the psychosocial aspects of health discussed at a visit, which are often not billable or diagnosed conditions. Only one previous study has conducted in-depth observations regarding the range of health issues discussed during primary-care visits for adults with diabetes (Parchman et al., Reference Parchman, Romero and Pugh2006), but it was conducted over a decade ago, did not evaluate who initiated the health concern, and was not focused on the underserved. No study, to our knowledge, has recently described the complete range of health issues in populations with diabetes and low socio-economic status (SES). In addition, no one has evaluated the differences or similarities of health issues brought up by the patient versus the physician.

To better understand the type and range of health issues arising in ‘high-quality’ primary-care encounters with socio-economically disadvantaged adults diagnosed with diabetes, we conducted an in-depth analysis of office visits of adults with diabetes in an exemplar primary-care practice caring mainly for an African American low-income population. Given the continued and rapid changes being made in primary care, such as patient-centered medical homes and accountable care organizations, the results of this recent in-depth analysis can be used to inform policy, organization, and quality improvement efforts for clinics with socio-economically disadvantaged populations.

Methods

Study population

We purposefully selected one exemplar safety net clinic (defined as >50% of patients on medicaid or uninsured) from a county hospital in Northeast Ohio, performing in the top quartile on their biomedical quality of care scores for their patients with diabetes in 2009–2010 after obtaining institutional review board approval. The biomedical quality of care scores are locally adapted National Council of Quality Assurance measures for adults with diabetes, and included the percent of diabetes patients with blood pressure (BP) <140/90 mmHg, hemoglobin A1c<7%, and low-density lipoprotein cholesterol (LDL-c) <100 mg/dL. We purposively selected adult patients with diabetes who were scheduled for routine follow-up visits with their primary-care provider at the practice site.

Data collection and management

We used participant/direct observation for data collection, as we were interested in the observed number, range, and types of health issues brought up at the primary-care visit for adults with diabetes and as the primary author was a provider at the practice site. For each of the practices’ four primary-care physicians, we audio taped, observed, and transcribed three to four routine follow-up visits with diabetes patients after obtaining informed consent from patients and physicians. We excluded the primary-care provider who authored this paper due to potential biases; however, all the other providers participated in the study. Providers were told that we were observing the visit to evaluate current primary-care practice. We continued the enrollment of patients until we reached saturation of themes (when no new themes emerged from the data analysis). The research assistant and internal medicine physician developed and piloted an observation form, environmental checklist, performed key informant interviews of providers and patients, wrote daily field notes, and composed reflective memos. For this analysis, we focused on analyzing the transcribed office visits, as these were felt to be most pertinent to our objective of evaluating the range and types of health issues that arose at the visit. The research assistant (a PhD sociology candidate) audio-recorded and observed most of the patient visits, whereas a primary-care provider/health services researcher audio-recorded and observed the remaining patient visits.

Analysis

A multidisciplinary team used a purposeful, constant comparative approach to count and categorize health issues, raised by the patient or the physician at the primary-care visit (Bradley et al., Reference Bradley, Curry and Devers2007). Consistent with the thematic constant comparative approach, open-coding of themes occurred first, followed by iterative revision and condensing of codes (with researchers analyzing selected transcripts and then debriefing at regular meetings), and the creation of a coding dictionary (Glaser, Reference Glaser1965; Boeije, Reference Boeije2002; Bradley et al., Reference Bradley, Curry and Devers2007). Each visit transcript was coded by both a sociology PhD candidate and an internist, independently. They met regularly and reviewed the coding scheme and text to confirm or refute the groupings throughout the analysis. Before the start of the study, we assigned two thematic auditors to better establish validity: an experienced mixed methods researcher and family physician (K.S.) and a sociologist (A.P.). They reviewed selected transcript text, codings, and groupings. Disagreements were resolved by consensus. Our coding definitions are listed in the Appendix.

Results

Study population

The safety net clinic serves a mainly low-income African American population (90% African American, average median annual household income of $38 500, 83% had reported graduating from high school, 73% were women, 33% were uninsured, 26% had medicaid, 19% had medicare, and 22% were commercially insured). Out of the 20 patients asked to enroll, 15 patients consented to participate. The 15 patients were mainly African American (93%) with fair cardiovascular risk factor control (mean Hemoglobin A1c 7.5%, mean BP 134/81 mmHg, and mean LDL-c 100 mg/dL). The patients had a mixture of insurance categories: private (33%), private plus medicare (20%), medicare alone (7%), medicaid (7%), and uninsured (33%). These numbers were similar to the numbers of the overall clinic population outlined above. Patients who refused to participate (n=5) were more likely to be men but were otherwise similar to participants in terms of age and race. The providers were all family practice physicians, Caucasian, and married. Three providers were women and one provider was a man.

Number, range, and type of health issues

The mean visit length was 28 min (Figure 1). A median of 25 health issues per visit were addressed (Figure 1), including a wide variety of acute and chronic medical, psychological, and social concerns (Figure 2). Primary-care physicians more frequently initiated discussions about chronic disease management and prevention (23 and 21% of 365 total health issues, respectively, at 15 patient encounters), whereas patients more frequently initiated discussions about acute health concerns and social issues related to health (16 and 29% of total health issues, respectively). The count of health issues does not include health education or personal discussions unrelated to health.

Figure 1 Median (interquartile range) number of health issues per visit and median visit length at 15 diabetic visits in primary care

Figure 2 Domains of health issues initiated by clinician and patient at the primary-care visit (n=365 total health issues at 15 encounters)

Example case studies of routine follow-up diabetes visits

Description of case 1

Ms Jones has been seeing Dr Smith for many years and presented for a routine follow-up appointment. Table 1 summarizes the interaction. Dr Smith starts off discussing how Ms Jones’ recent employment has strong financial implications that will affect her health. Ms Jones confirms that she now has a job, but notes that she is not getting paid. A large part of the visit is spent discussing how to get her eight medications refilled – some with a social worker helping to fill out pharmaceutical companies’ free prescription applications and some via generic prescriptions at a local pharmacy.

Table 1 Case study 1: 21 healthcare issues from a patient’s 29-min primary-care visit

Pt=patient; LDL=low-density lipoprotein.

a Categories are generally listed in the order they were discussed. Parentheses in first column are used to describe sub-categories.

b Quotations may be slightly out of order if more than one set of quotations was used to describe one coded category. We have denoted this by writing [later] for the next set of quotations.

In addition to discussions related to financial concerns, Dr Smith and Ms Jones discuss in detail her diet, exercise program, blood sugar and BP values, self-monitoring, cholesterol medication adherence, diabetic supplies (med-alert bracelets, insulin syringes, and lancets), prevention (including plans for getting her a PAP smear, colonoscopy, and an eye exam), changes in sexual partners, her spiritual beliefs as they relate to her health, and two acute issues.

Analysis of case 1

In-depth study reveals a rich subtext of the attitudes, beliefs, knowledge, and behaviors, as well as the role of popular culture underpinning patients’ attempts to manage their diabetes. It is instructive for ‘Dr Smith’ to know that ‘Ms Jones’ ‘ate at Subway for a whole month’ (because Jared lost weight doing so) and decided that because the contestants on the Biggest Losers maintained their weight loss ‘at home, after the show,’ she could do so as well. Ms Jones acknowledges that she allows herself ‘wiggle room’ in trying to manage her diabetes: ‘I ate only half the foot long for lunch and the other half for dinner.’ Ms Jones’ expression of the belief that ‘my body feels better when my sugar is higher’ initiated a lengthy discussion about how to manage low as well as high blood sugar.

Her physician resourcefully integrates both the physician-directed health priorities such as chronic disease management of her diabetes and the patient-directed priorities such as her social environment into the overall plan of care. For instance, the physician incorporates the patient’s concerns about potential job loss and concern for medication costs when writing prescriptions, and the provider and patient work together with the social worker to derive the most appropriate regimen that will minimize costs while maximizing adherence. In the end, the provider prescribes some expensive medications such as insulin, which will be obtained through the help of the social worker via a free pharmaceutical company program that will mail the patient her medications. Other generic medications were prescribed that cost four dollars a month, such as her cholesterol medicine. Furthermore, the physician incorporates the patient-directed comments about her social environment regarding diet into the plan for weight loss by encouraging recent weight loss while modifying the ‘subway’ diet to have less bread.

Other example cases

Patients and providers discussed a wide range of issues at these primary-care visits (Table 2). Importantly, the visits included a broad range of health prevention, intra-/inter-personal, and social issues that go beyond the management of chronic disease. These findings illustrate the value of addressing both biomedical and psychosocial concerns at the diabetes medical encounter and undergird the argument that delivering high-quality care requires time, subtlety, and resources.

Table 2 Other case examples of health-related themes brought up at several routine office visits

NA=not applicable.

Sub-themes are highlighted in bold and included where a sub-theme is helpful to orient the reader.

Discussion

Although we expected the primary-care visit for adults with diabetes and low SES to be diverse in the range of health issues, the surprisingly large number of health issues (median 25) and the inter-relationship with the social environment of patients’ lives was remarkable. Similar to our study, one previous observational study reported that primary-care physicians deal with an average of 17 topics, questions, and symptoms at the primary-care diabetic visit (Parchman et al., Reference Parchman, Romero and Pugh2006), in contrast with the average of five problems noted in the visit medical record and four problems in the bill (Beasley et al., Reference Beasley, Hankey, Erickson, Stange, Mundt, Elliott, Weisen and Bobula2004).

Quantitative studies often fail to capture other issues such as the social environment (Samuels et al., Reference Samuels, Bolen, Yeh, Abuid, Marinopoulos, Weiner, McGuire and Brancati2008; Martin and Sturmberg, Reference Martin and Sturmberg2009) as they relate to health, which emerged as a major domain of patient concern in our evaluation (i.e., how to afford medications, how work and family impact their diabetes management). The doctor–patient visits in this in-depth analysis highlight the large number of health and social issues addressed at the so-called routine follow-up visits between adults with diabetes and their primary-care physician in a high-quality practice of socio-economically disadvantaged patients.

These findings show what is possible in dedicated primary care – possibilities that provide hope for overcoming the chasms of fragmentation and poor quality that characterize much of the US healthcare system (IOM, 2012). Study findings provide insights that can help re-think what we mean by ‘quality’ (Krein et al., Reference Krein, Hofer, Kerr and Hayward2002), which, in these visits, involve a bio-psychosocial model of care that integrates the biomedical, psychosocial, and environmental determinants of health (Engel, Reference Engel1977). Excessive focus on caring for individual diseases over integrating care for the complex interactions among patients’ acute concerns, multiple chronic conditions, and psychosocial/system/environmental factors (Stange, Reference Stange2009a; Reference Stange2009b; Reference Stange2009c) may be a reason for the poor performance of the US healthcare system compared with other countries with systems based more heavily on primary care (Schoen et al., Reference Schoen, Osborn, How, Doty and Peugh2009). This study shows that exemplar primary-care physicians are able to integrate complex care in ways that go well beyond biochemical targets such as A1c. Although these physicians were doing well achieving their biomedical quality targets, they were also building and sustaining meaningful and caring relationships with patients, which can strongly impact patient outcomes over time (Beach and Inui, Reference Beach and Inui2006; Epstein et al., Reference Epstein, Fiscella, Lesser and Stange2010). This caring was demonstrated by integrating care of patients’ most salient concerns, as well as their social and work lives, with collaborative management of their multiple health conditions and concerns.

Several limitations to our study deserve mention. As this was a qualitative study that was carried out at one clinic, the conclusions may not be generalizable to the overall population. However, we were not trying to generalize findings but explore the range of health issues discussed in a primary-care visit to inform future potential interventions to improve care. Second, although we tried to combat bias in our analysis by including sociologists and primary-care physicians along with third-party physician review to confirm or refute findings, we recognize that some biases are hard to fully address. For instance, providers are more likely to conclude that they need more time with patients as we have suggested in this study. However, we also note that patients are more likely to bring up psychosocial issues than providers during an office visit; therefore, not all of our findings are biased toward positive provider performance.

This study also has several important implications. First, the study raises questions about how ‘productivity’ is assessed in primary care. From bio-psychosocial and patient-centered points of view, the observed visits were highly productive. However, most of the present productivity measures and financial incentives emphasize ‘throughput’ (Morrison and Smith, Reference Morrison and Smith2000; Wilson et al., Reference Wilson, Joiner, Inzucchi, Mulligan, Mechem, Gross and Coleman2006; Berenson and Rich, Reference Berenson and Rich2010) and place financial disincentives against caring for complex patients (Hong et al., Reference Hong, Atlas, Chang, Subramanian, Ashburner, Barry and Grant2010). In a recent effort to increase revenue, the study site has now decreased scheduled visit time for such patients by overbooking 20 min slots based on no-show rates with no rules related to patient complexity. The average visit length of these exemplar physicians was closer to 30 min, and shows what might be possible if the complexity of visits to primary care is recognized and supported. Fortunately, some of the recent efforts to reorganize primary care (Dorr et al., Reference Dorr, Wilcox, Burns, Brunker, Narus and Clayton2006), including some patient-centered medical home initiatives (Reid et al., Reference Reid, Coleman, Johnson, Fishman, Hsu, Soman, Trescott, Erikson and Larson2010), recognize this potential, and support smaller panel sizes, longer visits, and team support for diverse patient needs (Margolius and Bodenheimer, Reference Margolius and Bodenheimer2010). Second, the fact that patients were more likely to bring up psychosocial concerns compared with providers underscores the need to address these concerns in a systematic manner. Developing primary-care teams with personnel to address psychosocial concerns such as care co-ordinators and social workers is one way to better address this issue, especially for disadvantaged populations. Another mechanism might be the use of a checklist for provider teams to ensure these concerns are proactively addressed by our primary-care teams.

Systems that incentivize quality and care integration over quantity may have the benefit of allowing scheduling of complex patients at more appropriate intervals and allow for more adequate resources for caring for biomedical and psychosocial aspects of patient health. In this time of tumultuous change in care organization and payment, we should support models of primary-care delivery and quality measurement, which allow adequate time and resources to address the range and complexity of tasks that are necessary for improving the health of socio-economically disadvantaged patients.

Acknowledgments

The project funding and Dr Bolen’s time was supported by the National Center for Research Resources (grant no. KL2 RR024990), National Institutes of Health (NIH). Dr Bolen’s time was also supported by the National Center for Advancing Translational Sciences (grant no. KL2TR000440), National Institutes of Health. The content is solely the responsibility of the authors and does not necessarily represent the official views of the NIH. Dr Bolen had full access to all the data in the study and takes responsibility for the integrity of the data and the accuracy of the data analysis.

Financial Support

None.

Conflicts of Interest

None.

Ethical Standards

The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional guidelines on human experimentation (MetroHealth institutional review board) and with the Helsinki Declaration of 1975, as revised in 2008.

Appendix: coding definitions – 14 January 2011

Chronic diseases

‘Diseases that have one or more of the following characteristics: they are permanent, leave residual disability, are caused by non-reversible pathological alteration, require special training of the patient for rehabilitation, or may be expected to require a long period of supervision, observation, or care.’1 A summation of the chronic diseases the patient has: diabetes, hyperlipidemia, hypertension, and other. Transient ischemic attacks (TIAs), obesity, and allergies are considered chronic conditions. If a condition is implied but not specifically mentioned/discussed, do not count it as a chronic condition. If a condition is discussed but it is a new symptom (i.e., high blood pressure (HBP) or cholesterol in a diabetic patient without a previous history of HBP or cholesterol), mark the discussion under acute/new symptom. High calcium (parathyroid hormone) and vitamin D deficits may be considered chronic conditions.

Acute/new patient symptoms

‘Disease having a short and relatively severe course.’2 Any new or acute symptom, complaint, or health issue mentioned during the encounter not coded elsewhere. New chronic conditions such as TIA or stroke that has happened since the last visit and not known to the physician are considered new and may be related to diabetes (such as TIA). If a cluster of symptoms seems to be related (cough, shortness of breath, fever), then count cluster of symptoms as one new complaint NOT several. If the patient brings up a symptom very briefly (i.e., only a few words or sentence) in the midst of other complaints but it never gets discussed, then do not count it. List the symptoms discussed.

Medication issues=Medication side-effects plus medication refills described next below.

Medication side-effects, group

This is the sum of the check blocks ‘medication side-effects, diabetes,’ ‘medication side-effects, HBP,’ ‘medication side-effects, low-density lipoprotein (LDL),’ and ‘medication side-effects, other.’ Count each instance. Include only if patient actually has the side-effects. If physician is educating the patient about possible side-effects, then code under education. If the patient is concerned about possible future side-effects and physician educates about that issue, code under education.

  1. 1. Medication side-effects, diabetes

    Must refer to specific side-effects of a specific diabetes medication as it affects a patient. Check only if the patient actually has side-effects.

  2. 2. Medication side-effects, HBP

    Must refer to specific side-effects of a specific blood pressure (BP) medication as it affects a patient; if a general comment, code under ‘education.’ Check only if the patient actually has side-effects.

  3. 3. Medication side-effects, LDL

    Must refer to specific side-effects of a specific LDL medication as it affects a patient; if a general comment, code under ‘education.’ Check only if the patient actually has side-effects.

  4. 4. Medication side effects, other

    Must refer to specific side effects of a specific medication as it affects a patient; if a general comment code under ‘education.’ Check only if the person actually has actual side-effects.

Medication refills, overall group

If medication refills are mentioned only globally and no specific drugs are mentioned, mark the overall category of medication refills and do not mark specifics below overall category. If specific drugs are mentioned, mark who brought up medication refills first under overall category and then fill in about specific drugs below (see next few groupings on medication refills).

  1. 1. Medication refill, diabetes

    Specific medication and ‘refill’ must be mentioned.

  2. 2. Medication refill, BP

    Specific medication and ‘refill’ must be mentioned.

  3. 3. Medication refill, LDL

    Specific medication and ‘refill’ must be mentioned.

  4. 4. Medication refill, other meds

    Specific medications (other than diabetes, BP, and LDL) and ‘refill’ must be mentioned.

(Health) behavior

‘Behaviors expressed by individuals to protect, maintain, or promote their health status. For example, proper diet and appropriate exercise are activities perceived to influence health status. Life style is closely associated with health behavior and factors influencing life style are socio-economic, educational, and cultural.’2 The following behaviors (defined below) are considered behaviors related to diabetes self-management: diet, exercise, monitoring feet, adherence to medications (diabetes, BP, and cholesterol), self-monitoring of sugar, self-monitoring of BP, smoking use, alcohol use, and drug use. Record behaviors relating to other health issues under ‘other behavior.’ Specify instances of patient non-adherence in the space provided.

  1. 1. Behavior diet

    Any reference to food, diet, or eating behavior.

  2. 2. Behavior exercise

    Any reference to exercise or movement of any kind, in any context; for example, a reference to ‘climbing stairs in a friend’s house’ meets the criterion.

  3. 3. Behavior check feet

    Specific reference about adherence, ‘Do you check your feet?’ or ‘I check my feet.’

  4. 4. Behavior adherence, diabetes medications

    Any reference to diabetes medications being taken. A physician merely asking a patient ‘are you taking [medication]’ meets the criterion as does a patient who mentions in passing taking a diabetes medication.

  5. 5. Behavior adherence, BP medications

    Any reference to BP medications being taken. A physician merely asking a patient ‘are you taking [medication]’ meets the criterion as does a patient who mentions in passing taking a BP medication.

  6. 6. Behavior adherence, LDL medications

    Any reference to LDL medications being taken. A physician merely asking a patient ‘are you taking [medication]’ meets the criterion as does a patient who mentions in passing taking an LDL medication.

  7. 7. Behavior, self-monitor sugar

    Must be specific reference to how often readings are taken, when taken, the times of day; do not infer from ancillary comments that patient is monitoring sugar. The question ‘what are your sugar levels?’ does not meet the criteria here. A discussion about needing to check sugar levels would count.

  8. 8. Behavior, self-monitor BP

    Can refer to frequency, timing, or be a general statement or question – for example, ‘I am monitoring my blood pressure,’ or ‘do you monitor your blood pressure at home?’ Applies if patient/provider refers to the use of a BP monitor at home.

  9. 9. Behavior, smoking

    Any reference to smoking. A comment or question such as ‘You are not a smoker, right?’ meets this criterion. Comments/discussions relating to cessation specifically are recorded in the ‘smoking cessation’ checkbox AND under behavior smoking here.

  10. 10. Behavior, alcohol

    Any reference to alcohol. A comment or question such as ‘You are not a drinker, right?’ meets this criterion. Comments/discussions relating to cessation specifically are recorded in the ‘alcohol cessation’ checkbox AND under behavior alcohol here.

  11. 11. Behavior, drugs

    Any reference to illegal street drugs or others. A comment or question such as ‘You are not using drugs, right?’ meets this criterion. Comments/discussions relating to cessation specifically are recorded in the ‘drug use cessation’ checkbox AND under behavior here.

  12. 12. Behavior, other

    Any other discussion that is felt to be related to behavior that does not fit the above categories.

  13. 13. Non-adherence

    Any comment that relates to patients not following the physician’s advice regarding diabetes standards and/or other healthcare issues. Include as non-adherence if a patient did not follow-up with a referral even if the referral was supposed to contact the patient. If a medication is ‘as needed’ and the patient is not taking it, this does not count as non-adherence. If the patient is not 100% adherent, then he/she would meet the non-adherence criteria, but this has to be specified in writing as a comment.

    Include as non-adherence if the patient is mentioned as not regularly seeing the physician.

Co-ordination of care

‘We define care co-ordination as the deliberate organization of patient care activities between two or more participants (including the patient) involved in a patient’s care to facilitate the appropriate delivery of healthcare services. Organizing care involves the marshalling of personnel and other resources needed to carry out all required patient-care activities, and is often managed by the exchange of information among participants responsible for different aspects of care.’3 (Include references to social worker, also includes references to a physician communicating with a patient via letters.)

Prevention

Includes sub-categories related to disease prevention like screening, immunizations, chemo preventive, and other. Preventive measures are checked even if there is only mention or discussion of them and are not actually carried out.

  1. 1. Screening

    Includes mention of the following: breast exam or mammogram; PAP or human papillomavirus; PSA or prostate exam; colonoscopy or fecal occult or barium; human immunodeficiency virus or other sexually transmitted diseases testing in asymptomatic individuals.

  2. a. Screening, other: any mention of screening test other than those included in the definition of ‘Screening’ above. Include in this category references to lab results (e.g., blood count, liver, Hep C, etc.).

  3. 2. Immunizations

    Check specific immunization: tetanus, pneumonia, and flu.

  4. a. Immunizations, other: immunizations other than tetanus, pneumonia, and flu.

  5. 3. Chemo preventive

    Includes mentions of aspirin and prenatal vitamins as well as calcium/vitamin D and ‘other’ preventive agents. Other vitamins are not included in this category.

  6. 4. Preventive, other

    Any preventive measure/test not included in the categories screening, immunizations, and chemo preventive.

Review of systems

Any physical exam/mention of/discussion of system – for example, respiratory, nervous, reproductive, circulatory, digestive, etc. The question ‘Have you had any chest pain and/or shortness of breath’ meets this criterion.

Psychosocial variables, group (intra-personal and social environment)

The coding scheme for this project reflects the World Health Organization’s definition of ‘health’: ‘Health is a state of complete physical, mental, and social well-being and not merely the absence of disease or infirmity.’4 Specification of the following nine categories was data-driven; that is, these themes, falling under the psychosocial rubric, emerged from the data. We further classified the nine variables into two groups: Intra-personal (sexuality, intimacy; emotional) and social environment (community, neighborhood; larger culture, society; economic, financial, insurance; work, occupation, job; family social connections; non-family social connections; spiritual, religious.) ‘Intra-personal’ is defined as ‘occurring inside a person’s mind or character;’5 and ‘social environment’ is defined as variables encompassing ‘the immediate physical surroundings, social relationships, and cultural milieu within which defined groups of people function and interact.’6 Attempt to record for each category only those references that relate to health issues; however, if in doubt, assume the issue is health-related.

Social environment – neighborhood, community

Include any references to community, local resources such as other health system resources (e.g., availability of discounted medications at a system clinic). Does not include mentions/discussion of Partners in Care and Medicare; these are included in the financial category, also includes references to healthcare related issues such as neighborhood crime, availability of healthcare services, Urgent Care, other medical centers, etc.

Social environment – larger culture, society

By ‘society’ we mean a geographical territory – the United States – that is distinguished by its cultural, structural, and population/ecological characteristics.7 Include references to health-related cultural or societal phenomena – for example, eating at Subway to lose weight; watching Biggest Losers and adopting its spreadsheet system to track weight loss; ubiquity of fast food restaurants; and public policy as it relates to healthcare. Place references to insurance status or other financial concerns in the financial category. Do not include here (put in economic category) references to larger cultural economic issues – that is, difficult labor market, etc.

Social environment – economic, financial, and insurance

Include references to the patient’s financial situation as it relates to health matters – for example, ability to afford medical care, prescriptions, insurance status, etc. Also include here references to the larger societal issue of unemployment, difficulty finding jobs.

Social environment – work, occupation, and job

Include health-related references to work, jobs, occupation, and retirement.

Social environment – family social connections

Include health-related references to family – for example, daughter checks my BP, caregiver for ill relative, etc.

Social environment – non-family social connections

Health-related social connections not included in the family member connection category – for example, difficult to follow diet when out with friends.

Social environment – spiritual, religious

Include references to a religion, church, deity, spirituality in relation to health. Record statements such as ‘pray for me.’

Intra-personal – sexuality, intimacy

Include health-related issues involving intimate partner – for example, sexual activity discussed in relation to discussion of birth control.

Intra-personal – emotional

Include reference to mental ‘feeling’ or ‘affection’ (e.g., of pleasure or pain, desire or aversion, surprise, hope or fear, etc.), as distinguished from cognitive or volitional states of consciousness.’8 Record any expression of emotions related to health for example, missed appointments because grieving deaths. Does NOT include discussion of depression or anxiety symptoms. If there is a history of depression and discussing this, then list under chronic conditions. If no history of depression, but discussing new symptoms of depression or anxiety that needs medical attention, then classify under acute/new symptoms.

Dental

Any comment/reference made to dental health.

Family planning

Any discussion related to birth control or pregnancy.

References for coding definitions

1. PubMed, MeSH, Dictionary of health services management, second edition. Retrieved from http://www.ncbi.nlm.nih.gov/mesh

2. PubMed, MeSH, http://www.ncbi.nlm.nih.gov/mesh

3. McDonald, K.M., Sundaram, V., Bravata, D.M., Lewis, R., Lin, N., Kraft, S., McKinnon, M., Paguntalan, H., Owens, D.K. 2007: Care coordination. In Shojania, K.G., McDonald, K.M., Wachter, R.M., Owens, D.K., editor, Closing the quality gap: a critical analysis of quality improvement strategies. Technical review 9 (Prepared by the Stanford University-UCSF Evidence-based Practice Center under contract 290-02-0017: AHRQ Publication No. 04(07)-0051-7), Volume 7. Rockville, MD: Agency for Healthcare Research and Quality.

4. Preamble to the Constitution of the World Health Organization as adopted by the International Health Conference, New York, 19–22 June, 1946; signed on 22 July 1946 by the representatives of 61 States (Official Records of the World Health Organization, no. 2, 100pp.) and entered into force on 7 April 1948.

5. Intrapersonal 1989: The Oxford english dictionary, second edition. OED Online. Oxford University Press. Retrieved 5 January 2011 from http://www.oed.com/view/Entry/98580?redirectedFrom=intrapersonal#eid143972

6. Barnett, E., Casper, M. 2001: A definition of ‘social environment’ (letters). American Journal of Public Health 91, 465.

7. Johnson, A.G. 1995: Blackwell dictionary of sociology. Massachusetts Blackwell Publishers, Inc., 268 pp.

8. Emotion 1989: The Oxford english dictionary, second edition. OED Online. Oxford University Press. Retrieved 5 January 2011 from http://www.oed.com/view/Entry/61249?redirectedFrom=emotion

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Figure 0

Figure 1 Median (interquartile range) number of health issues per visit and median visit length at 15 diabetic visits in primary care

Figure 1

Figure 2 Domains of health issues initiated by clinician and patient at the primary-care visit (n=365 total health issues at 15 encounters)

Figure 2

Table 1 Case study 1: 21 healthcare issues from a patient’s 29-min primary-care visit

Figure 3

Table 2 Other case examples of health-related themes brought up at several routine office visits