| Literature DB >> 30536142 |
Judith J Stephenson1, Jay P Bae2, Amit D Raval3, David M Kern4.
Abstract
INTRODUCTION: Complex or personalized insulin regimens challenge traditional adherence measures. Our objective was to develop an improved basal insulin (BI) adherence measure using both patient-reported and administrative claims data, resulting in a more complete measure.Entities:
Keywords: Adherence; Basal insulin; Claims analysis; Claims-based adherence; Observational study; Self-reported adherence; Type 2 diabetes mellitus
Mesh:
Substances:
Year: 2018 PMID: 30536142 PMCID: PMC6318230 DOI: 10.1007/s12325-018-0828-4
Source DB: PubMed Journal: Adv Ther ISSN: 0741-238X Impact factor: 3.845
Comparison of claims-based and survey-based basal insulin usage measures
| Insulin usage patterns | Mean (SD) | Median (Q1–Q3) |
|---|---|---|
| Insulin fillsa, | ||
| Claims-based insulin fills | 8.3 (3.8) | 8.0 (5.0–11.0) |
| Self-reported 30-day fills | 12.0 (6.3) | 12.0 (10.0–13.0) |
| Insulin total daily dose, IU | ||
| Claims-based | 77.9 (71.8) | 60.0 (50.0–100.0) |
| Self-reported | 57.7 (38.3) | 50.0 (30.0–72.0) |
| Average days of BI per fill, days | ||
| Claims-based | 35.0 (17.3) | 27.8 (25.3–38.7) |
| Self-reported | 43.0 (35.6) | 30.0 (30.0–52.5) |
| MPRb, continuous | ||
| Traditional claims-based MPR | 0.75 (0.2) | 0.80 (0.63–0.90) |
| Adjusted claims-based MPR | 0.92 (0.2) | 0.98 (0.77–1.11) |
| Patients’ self-reported MPR | 0.99 (0.5) | 0.99 (0.82–1.07) |
| Hybrid MPR | 1.13 (1.4) | 0.87 (0.65–1.13) |
BI basal insulin, IU international units, MPR medication-possession ratio
aNumber of refills during the 12-month period prior to and including the survey date
bBased on the findings from a patient focus group study and survey, we noted that BI users may stockpile insulin; to reflect the actual BI utilization patterns, we did not truncate MPR with value > 1
Fig. 1Comparison of patients’ self-reported and claims-based basal insulin adherence measures. Adherence to basal insulin based on MPR ≥ 0.80. BI basal insulin, CB claims-based, MPR medication possession ratio.
Claims-based characteristics by adherence to insulin among patients with T2DM using basal insulin
ADCSI Adjusted Diabetes Complication Survey Index, ED emergency department, IQR interquartile range, MPR medication possession ratio, PVD peripheral vascular disease, QCI Quan–Charlson Comorbidity Index, SD standard deviation, T2DM type 2 diabetes mellitus
Comparison of estimates from simple, stepwise logistic, and LASSO regression models
| Covariates | Simple logistic regression | Stepwise logistic regression | LASSO regressiona | ||
|---|---|---|---|---|---|
| AOR | AOR | AOR | |||
| Standardized total claims-based BI days supply (continuous) | 3.26 (1.67–6.36) | 0.001 | 2.79 (2.07–3.76) | < 0.0001 | 2.11 |
| Retinopathy (yes vs. no) | 1.92 (0.94–3.93) | 0.072 | 1.09 | ||
| Adjusted MPR-based adherence (yes vs. no) | 1.07 | ||||
| Standardized age (continuous) | 0.72 (0.53–0.97) | 0.030 | 0.73 (0.56–0.95) | 0.019 | 0.93 |
| Non-insulin injectable use (yes vs. no) | 0.48 (0.23–1.00) | 0.049 | 0.47 (0.23–0.95) | 0.034 | 0.80 |
| Cardiovascular complication (yes vs. no) | 0.42 (0.15–1.14) | 0.089 | |||
AOR adjusted odds ratio, BI basal insulin, LASSO least absolute shrinkage and selection operator, MPR medication possession ratio
aEquation based on LASSO regression model
Log (1/1 − P) = 0.2442 + (0.7478 × standardized total claims-based BI days supply) + 0.0847 × (retinopathy) + 0.0681 × (adjusted MPR-based adherence) − (0.0721 × standardized age) − (0.2231 × non-insulin injectable use)
For model specific standardized age and total days of BI supply were calculated as:
Standardized age = (age of a patient − mean age of sample population − 57)/standard deviation of age for sample population (9)
Standardized total-days of insulin supply = (total days of BI supply of a patient − mean total days supply of BI-247)/standard deviation of age for sample population (69)
The presence of cardiovascular complication was confirmed with at least ≥ 1 medical codes for retinopathy during study period (ICD-9 codes: 440.xx, 411.xx, 413.xx, 414.xx, 410.xx, 427.1x, 427.3x, 427.4x, 427.5x, 429.2x, 412.xx, 428.xx, 440.23, 440.24, 441.xx; ICD-10 codes: I70.%, I24.%, I20.%, I25.1%, I25.5%, I25.6%, I25.7%, I25.8%, I25.9%, I21.%, I22.%, I23.%, I49.0%, I48.%, I25.2%, I50.%, I71.%)
The presence of retinopathy was confirmed with ≥ 1 medical codes for retinopathy during study period (ICD-9 codes: 250.5x, 362.01, 362.1x, 362.83, 362.53, 362.81, 362.82, 362.02, 361.xx, 369.xx, 379.23; ICD-10 codes: E08.3%, E10.3%, E11.3%, E13.3%, H35.0%, H35.2%, H35.4%, H35.7%, H35.8%, H35.81%, H35.351, H35.352. H35.353, H35.359, H35.9%, H35.2%, E08.35%, E10.35%, E11.35%, E13.35%, H33.0%, H33.2%, H54.0%, H54.1%, H54.4%, H54.8%, H43.1%)
Use of non-insulin injectables medication include GLP-1 receptor agonist (GPI code: 2717x) or amylin products (GPI code: 2715x)
Comparison of LASSO model performance with traditional measures used to estimate basal insulin adherence
| TP ( | TN ( | FP ( | FN ( | Sensitivity TP/(TP + FN) (%) | Specificity TN/(FP + TN) (%) | PPV TP/(TP + FP) (%) | NPV TN/(TN + FN) (%) | Accuracy (TP + TN)/(TP + FP + FN + TN) (%) | |
|---|---|---|---|---|---|---|---|---|---|
| Traditional adherence measures | |||||||||
| Traditional MPR (≥ 0.8) | 104 | 86 | 44 | 62 | 63 | 66 | 70 | 58 | 64 |
| Adjusted MPR (≥ 0.8) | 124 | 80 | 50 | 42 | 75 | 62 | 71 | 66 | 69 |
| Model-based cut-off valuesa | |||||||||
| Threshold 1: Y-Index (≥ 0.55) | 124 | 83 | 47 | 42 | 75 | 64 | 73 | 66 | 70 |
| Threshold 2: SENSMAX (≥ 0.50) | 135 | 69 | 61 | 31 | 81 | 53 | 69 | 69 | 69 |
| Threshold 3: SPECMAX (≥ 0.65) | 87 | 103 | 27 | 79 | 52 | 79 | 76 | 57 | 64 |
FN false negative, FP false positive, LASSO least absolute shrinkage and selection operator, NPV negative predictive value, PPV positive predictive value, TN true negative, TP true positive
aBased on LASSO regression model
Threshold 1: Y-Index: a threshold based on Younden’s Index (Y-Index), which represents predictive probability threshold to correctly identify the adherence a point where sum of sensitivity and specificity is maximum (i.e. calculated as sensitivity + specificity − 1)
Threshold 2: SENMAX was considered with a focus to maximize sensitivity (true positives) with fair specificity (> 50%)
Threshold 3: SPECMAX was considered with a focus to maximize specificity (true negative) with fair specificity (> 50%)
Fig. 2Adherence levels using different methods to identify insulin adherence in larger validation cohort. MPR medication possession ratio, P-SENMAX threshold yielding maximum sensitivity based on predictive model, SPECMAX threshold yielding maximum specificity based on predictive model, Trad traditional, Y-Index Younden’s Index