| Literature DB >> 30475823 |
Katherine M Prenovost1, Stephan D Fihn2, Matthew L Maciejewski3,4, Karin Nelson5,6, Sandeep Vijan7,8, Ann-Marie Rosland9,10.
Abstract
A critical step toward tailoring effective interventions for heterogeneous and medically complex patients is to identify clinically meaningful subgroups on the basis of their comorbid conditions. We applied Item Response Theory (IRT), a potentially useful tool to identify clinically meaningful subgroups, to characterize phenotypes within a cohort of high-risk patients. This was a retrospective cohort study using 68,400 high-risk Veteran's Health Administration (VHA) patients. Thirty-one physical and mental health diagnosis indicators based on ICD-9 codes from patients' inpatient, outpatient VHA and VA-paid community care claims. Results revealed 6 distinct subgroups of high-risk patients were identified: substance use, complex mental health, complex diabetes, liver disease, cancer with cardiovascular disease, and cancer with mental health. Multinomial analyses showed that subgroups significantly differed on demographic and utilization variables which underscored the uniqueness of the groups. Using IRT models with clinical diagnoses from electronic health records permitted identification of diagnostic constellations among otherwise undifferentiated high-risk patients. Recognizing distinct patient profiles provides a framework from which insights into medical complexity of high-risk patients can be explored and effective interventions can be tailored.Entities:
Mesh:
Year: 2018 PMID: 30475823 PMCID: PMC6261016 DOI: 10.1371/journal.pone.0206915
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Study sample characteristics (N = 68,400).
| Age ≥65 | 56% |
| White, non-Latino | 59% |
| Married | 37% |
| Unemployed | 6% |
| ≥5 Outpatient visits in 90 days | 55% |
| >15 Non-face to face encounters- | 79% |
| (per year) | |
| ≥3 ED visits per year | 41% |
| ≥1 Inpatient admission per year | 62% |
| Depression | 40% |
| Anxiety | 19% |
| Post-traumatic stress disorder | 22% |
| Serious mental illness | 24% |
| Bipolar | 7% |
| Psychosis | 9% |
| Drug abuse | 20% |
| Alcohol abuse | 18% |
| Nicotine abuse | 29% |
| Hypertension | 72% |
| Coronary artery disease | 29% |
| Congestive heart failure | 21% |
| Cardiac arrhythmias | 24% |
| Chronic pulmonary disease | 33% |
| Cerebrovascular Disease | 13% |
| Peripheral vascular disease | 17% |
| Clotting disorders | 6% |
| Diabetes | 43% |
| Electrolyte disorders | 15% |
| Thyroid disorders | 11% |
| Chronic renal failure | 17% |
| Acute renal failure | 10% |
| Polyneuropathy | 12% |
| Liver disease | 13% |
| Chronic hepatitis | 10% |
| Chronic arthritis | 47% |
| Chronic pain | 77% |
| Weight loss | 7% |
| Anemia | 20% |
| Malignant tumor- | 21% |
| (Cancer including recurrence) | |
| Malignant neoplasm- | 22% |
| (non-relapse cancers) |
1White vs. non-white or undisclosed
2Includes episodic (bipolar conditions) and unspecified paranoid disorders. (12.5% undisclosed).
Fig 1Interpreting IRT item characteristic curves (ICC) as defined by medical diagnoses for two example patients from the same subgroup.
This figure illustrates fundamental aspects of IRT models using two hypothetical patients from the same subgroup. Medical conditions and persons are each given estimates which place them on the construct, medical complexity; estimates represent amount of complexity captured by the medical condition or person. Here, the two patients represent low and high amounts of complexity and consequently, which medical conditions they were likely to have given their levels of complexity.
Fit indices of mixture distribution IRT models: 1–7 class solution based on 29 medical conditions (N = 68,400 patients).
| #Latent classes | -2 Log Likelihood | #Parameters estimated | BIC |
|---|---|---|---|
| 1 | 1,769,508 | 50 | 1,769,704 |
| 2 | 1,681,100 | 101 | 1,682,223 |
| 3 | 1,658,348 | 152 | 1,660,039 |
| 4 | 1,643,788 | 203 | 1,646,048 |
| 5 | 1,621,948 | 254 | 1,624,776 |
| 6 | 1,615,130 | 305 | 1,618,830 |
| 7 | 1,609,394 | 356 | 1,613,357 |
Fig 2Prevalence of medical conditions by subgroup (prevalence rates <15% not labeled).
This bar chart shows the prevalence of selected medical condition used to help label the subgroups. Not all of these medical conditions were included in the final models because they either were too prevalent (> 95%) or not prevalent enough (< 5%), but were presented here descriptively to help identify the nature of the groups.
Fig 3Item characteristic curves showing probability of having a medical condition as a function of amount of medical complexity and patient subgroup.
As previously demonstrated in Fig 1; a medical condition in one group may reside at the lower end of the complexity continuum, while in another group, the same condition represents extreme complexity.
Descriptive demographic and utilization information within subgroups, %(n).
| Latent Classes | ||||||
|---|---|---|---|---|---|---|
| Substance Use (n = 9,344) | Complex Mental Health ( | Complex Diabetes ( | Liver Disease ( | Cancer+Cardiac ( | Cancer+Mental Health ( | |
| Marital Status | ||||||
| Married | 19.3% (1,802) | 37.1% (4,814) | 41.7% (9,180) | 30.3% (1,724) | 46.9% (3,703) | 38.1% (1,780) |
| Divorced | 41.4% (3,871) | 35.1% (4,557) | 30.4% (6,686) | 39.4% (2,244) | 27.6% (2,178) | 35.9% (1,676) |
| Single | 38.5% (3,600) | 26.9% (3,486) | 27.1% (5,967) | 29.6% (1,688) | 25.0% (1,973) | 25.2% (1,176) |
| Unknown | 0.8% (71) | 0.9% (115) | 0.7% (159) | 0.7% (42) | 0.6% (48) | 0.8% (39) |
| Male sex | 92.1% (8,604) | 84.3% (10,940) | 96.6% (21,243) | 96.0% (5,469) | 97.7% (7,717) | 93.5% (4,365) |
| Age | ||||||
| 18–54 | 41.8% (3,906) | 25.3% (3,279) | 5.2% (1,147) | 9.8% (556) | 1.8% (138) | 8.7% (407) |
| 55–64 | 38.6% (3,606) | 33.7% (4,377) | 21.6% (4,747) | 51.7% (2,944) | 13.7% (1,080) | 29.4% (1,371) |
| 65–74 | 17.6% (1,641) | 31.4% (4,079) | 40.1% (8,807) | 33.6% (1,915) | 40.7% (3,219) | 47.1% (2,202) |
| 75–84 | 1.6% (146) | 6.0% (780) | 19.2% (4,228) | 4.1% (231) | 26.2% (2,071) | 9.8% (459) |
| 85+ | 0.5% (45) | 3.5% (457) | 13.9% (3,063) | 0.9% (52) | 17.6% (1,394) | 5.0% (232) |
| Unemployed (2014) | 22.2% (2,075) | 5.7% (743) | 1.3% (295) | 6.8% (386) | 0.3% (27) | 4.0% (185) |
| Race | ||||||
| White | 50.9% (4,756) | 59.1% (7,668) | 61.8% (13,583) | 48.5% (2,763) | 62.3% (4,921) | 59.3% (2,771) |
| Black | 25.5% (2,384) | 17.4% (2,260) | 18.5% (4,076) | 26.8% (1,524) | 18.6% (1,472) | 19.6% (914) |
| Hispanic | 5.1% (479) | 6.8% (877) | 5.3% (1,167) | 6.9% (394) | 4.8% (378) | 5.0% (233) |
| Multiracial | 2.5% (233) | 2.2% (289) | 1.8% (386) | 2.3% (128) | 1.7% (135) | 1.7% (79) |
| Other | 1.5% (141) | 1.6% (207) | 1.6% (344) | 1.1% (65) | 1.3% (100) | 1.1% (50) |
| Unknown | 14.5% (1,351) | 12.9% (1,671) | 11.1% (2,436) | 14.5% (824) | 11.3% (896) | 13.4% (624) |
| CAN score | 45 (.16) | .40 (.13) | .49 (.18) | .44 (.16) | .48 (.17) | .46 (.16) |
| #Office visits | ||||||
| 0 or unknown | 4.4% (407) | 2.1% (273) | 3.3% (714) | 3.3% (189) | 1.6% (124) | 1.5% (72) |
| 1–2 | 45.3% (4,231) | 39.0% (5,064) | 46.7% (10,271) | 40.7% (2,321) | 36.2% (2,863) | 32.7% (1,525) |
| 3+ | 50.4% (4,706) | 58.9% (7,635) | 50.1% (11,007) | 56.0% (3,188) | 62.2% (4,915) | 65.8% (3,074) |
| #Non-face encounters | ||||||
| < 4 | 8.9% (829) | 4.5% (581) | 4.5% (996) | 4.0% (229) | 2.5% (200) | 3.3% (155) |
| 4 | 22.0% (2,056) | 17.8% (2,314) | 16.7% (3,678) | 14.0% (800) | 10.6% (835) | 14.0% (655) |
| 5 | 69.1% (6,459) | 77.7% (10,077) | 78.8% (17,318) | 81.9% (4,669) | 86.9% (6,867) | 82.7% (3,861) |
| #ER visits | ||||||
| 0/no information | 13.0% (1,218) | 14.3% (1,852) | 16.0% (3,510) | 17.2% (982) | 18.5% (1,462) | 20.9% (974) |
| 1–2 | 41.0% (3,829) | 44.0% (5,712) | 45.0% (9,905) | 41.8% (2,383) | 43.3% (3,424) | 42.9% (2,005) |
| 3+ | 46.0% (4,297) | 41.7% (5,408) | 39.0% (8,577) | 40.9% (2,333) | 38.2% (3,016) | 36.2% (1,692) |
| Inpatient admission | ||||||
| 0 | 32.4% (3,024) | 46.1% (5,974) | 36.3% (7,991) | 35.6% (2,029) | 35.1% (2,772) | 43.0% (2,007) |
| 1 | 67.6% (6,320) | 54.0% (6,998) | 63.7% (14,001) | 64.4% (3,669) | 64.9% (5,130) | 57.0% (2,664) |
1 Probability of hospitalization risk at 1-year; means and standard deviations are shown.
Predicted probabilities (pp), with 95% confidence intervals, indicating the likelihood of the classes being in the listed categories of demographic and service utilization factors, based on multinomial logistic regression analyses (N = 62,579).
| Latent Classes | ||||||
|---|---|---|---|---|---|---|
| Substance Use | Complex Mental Health | Liver | Complex Diabetes | Cancer+ Cardiac | Cancer+Mental Health | |
| Married | 19 (.18, .20) | .37 | .30 (.29, .31) | .42 (.41, .43) | .47 (.46, .48) | .38 |
| Male sex | 92 | .84 (.84, .85) | .96 | .97 | .98 (.97, .98) | .93 |
| Age 65+ years old | 20 (.19, .20) | .41 | .39 | .73 (.73, .74) | .85 (.84, .85) | .62 (.61, .63) |
| Unemployed (2014) | 22 (.21, .23) | .06 | .07 | .01 (.01, .01) | < .01 (.00, .00) | .04 (.03, .05) |
| Race/Ethnicity–White, non-Latino | 51 | .59 | .48 | .62 | .62 | .59 |
| ≥5 Office visits (within 90 days) | 50 | .59 (.58, .60) | .56 (.55, .57) | .50 | .62 (.61, .63) | .66 (.64, .67) |
| >15 Non-face encounters | ||||||
| (prior year) | 69 (.68, .70) | .78 | .82 | .79 | .87 (.86, .88) | .83 |
| ≥3 ED visits | ||||||
| (prior year) | 46 (.45, .47) | .42 | .41 | .39 | .38 | .36 |
| ≥1 Inpatient admission | ||||||
| (prior year) | 68 (.67, .69) | .54 (.53, .55) | .64 | .64 | .65 | .57 (.56, .58) |
1 Variables with the same superscripted letters are statistically equivalent.