Literature DB >> 29135773

Tree-based Claims Algorithm for Measuring Pretreatment Quality of Care in Medicare Disabled Hepatitis C Patients.

Viktor V Chirikov1, Fadia T Shaya, Ebere Onukwugha, C Daniel Mullins, Susan dosReis, Charles D Howell.   

Abstract

BACKGROUND: To help broaden the use of machine-learning approaches in health services research, we provide an easy-to-follow framework on the implementation of random forests and apply it to identify quality of care (QC) patterns correlated with treatment receipt among Medicare disabled patients with hepatitis C virus (HCV).
METHODS: Using Medicare claims 2006-2009, we identified 1936 patients with 6 months continuous enrollment before HCV diagnosis. We ran a random forest on 14 pretreatment QC indicators, extracted the forest's representative tree, and aggregated its terminal nodes into 4 QC groups predictive of treatment. To explore determinants of differential QC receipt, we compared patient-level and county-level (linked AHRF data) characteristics across QC groups.
RESULTS: The strongest predictors of treatment included "liver biopsy," "HCV genotype testing," "specialist visit," "HCV viremia confirmation," and "iron overload testing." High QC [n=360, proportion treated (pt)=33.3%] was defined for patients with at least 2 from the above-mentioned metrics. Good QC patients (n=302, pt=12.3%) had either "HCV genotype testing" or "specialist visit," whereas fair QC (n=282, pt=7.1%) only had "HCV viremia confirmation." Low QC patients (n=992, pt=2.5%) had none of the selected metrics. The algorithm accuracy of predicting treatment was 70% sensitivity and 78% specificity. HIV coinfection, drug abuse, and residence in counties with higher supply of hospitals with immunization and AIDS services correlated with lower QC.
CONCLUSIONS: Machine-learning techniques could be useful in exploring patterns of care. Among Medicare disabled HCV patients, the receipt of more QC indicators was associated with higher treatment rates. Future research is needed to assess determinants of differential QC receipt.

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Year:  2017        PMID: 29135773     DOI: 10.1097/MLR.0000000000000405

Source DB:  PubMed          Journal:  Med Care        ISSN: 0025-7079            Impact factor:   2.983


  4 in total

1.  Evaluation of Machine-Learning Algorithms for Predicting Opioid Overdose Risk Among Medicare Beneficiaries With Opioid Prescriptions.

Authors:  Wei-Hsuan Lo-Ciganic; James L Huang; Hao H Zhang; Jeremy C Weiss; Yonghui Wu; C Kent Kwoh; Julie M Donohue; Gerald Cochran; Adam J Gordon; Daniel C Malone; Courtney C Kuza; Walid F Gellad
Journal:  JAMA Netw Open       Date:  2019-03-01

2.  Integrating human services and criminal justice data with claims data to predict risk of opioid overdose among Medicaid beneficiaries: A machine-learning approach.

Authors:  Wei-Hsuan Lo-Ciganic; Julie M Donohue; Eric G Hulsey; Susan Barnes; Yuan Li; Courtney C Kuza; Qingnan Yang; Jeanine Buchanich; James L Huang; Christina Mair; Debbie L Wilson; Walid F Gellad
Journal:  PLoS One       Date:  2021-03-18       Impact factor: 3.240

3.  Machine learning approach to predict postoperative opioid requirements in ambulatory surgery patients.

Authors:  Akira A Nair; Mihir A Velagapudi; Jonathan A Lang; Lakshmana Behara; Ravitheja Venigandla; Nishant Velagapudi; Christine T Fong; Mayumi Horibe; John D Lang; Bala G Nair
Journal:  PLoS One       Date:  2020-07-31       Impact factor: 3.240

4.  Intersections of machine learning and epidemiological methods for health services research.

Authors:  Sherri Rose
Journal:  Int J Epidemiol       Date:  2021-01-23       Impact factor: 7.196

  4 in total

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