scholarly journals Anomaly Detection in Health Insurance Claims Using Bayesian Quantile Regression

Author(s):  
Ezekiel N. N. Nortey ◽  
Reuben Pometsey ◽  
Louis Asiedu ◽  
Samuel Iddi ◽  
Felix O. Mettle

Research has shown that current health expenditure in most countries, especially in sub-Saharan Africa, is inadequate and unsustainable. Yet, fraud, abuse, and waste in health insurance claims by service providers and subscribers threaten the delivery of quality healthcare. It is therefore imperative to analyze health insurance claim data to identify potentially suspicious claims. Typically, anomaly detection can be posited as a classification problem that requires the use of statistical methods such as mixture models and machine learning approaches to classify data points as either normal or anomalous. Additionally, health insurance claim data are mostly associated with problems of sparsity, heteroscedasticity, multicollinearity, and the presence of missing values. The analyses of such data are best addressed by adopting more robust statistical techniques. In this paper, we utilized the Bayesian quantile regression model to establish the relations between claim outcome of interest and subject-level features and further classify claims as either normal or anomalous. An estimated model component is assumed to inherently capture the behaviors of the response variable. A Bayesian mixture model, assuming a normal mixture of two components, is used to label claims as either normal or anomalous. The model was applied to health insurance data captured on 115 people suffering from various cardiovascular diseases across different states in the USA. Results show that 25 out of 115 claims (21.7%) were potentially suspicious. The overall accuracy of the fitted model was assessed to be 92%. Through the methodological approach and empirical application, we demonstrated that the Bayesian quantile regression is a viable model for anomaly detection.

2014 ◽  
Vol 37 (1) ◽  
pp. 76-85 ◽  
Author(s):  
Dong-Sook Kim ◽  
Nam Kyung Je ◽  
Grace Juyun Kim ◽  
Hena Kang ◽  
Yoon Jin Kim ◽  
...  

2019 ◽  
Vol 29 (Supplement_4) ◽  
Author(s):  
J S Park ◽  
T Okui ◽  
H Furuhashi ◽  
S Tokunaga ◽  
N Nakashima

Abstract Background There is growing awareness of polypharmacy as a global issue. Several countries have introduced policies to optimize multidrug prescriptions. In Japan, hospital prescription fee “F100” and outpatient prescription fee “F400” have been instituted to promote the correct use of drugs, the medical treatment fee is restricted when seven or more types of drugs are prescribed. However, non-polypharmacy patients who need multiple drugs are also comprehensively evaluated within the purview of the same drug insurance claim criteria. Thus, the current state of such policies is still unclear. This study identified the age group in which drug claims have changed based on drug insurance claim criteria and elucidated the relationship between policy interventions and multidrug prescriptions. Methods We analyzed F100 and F400 cases using open data from the National Database of Health Insurance Claims and Specific Health Checkups of Japan from April 2015 to March 2017. These sources include a population of about 69 million patients. Moreover, the growth rate of the number of patients who were prescribed seven or more types of drugs was evaluated. Results F100 prescription claims decreased by − 12.7% (n = 3,239,070) in 2016 as compared to 2015 (n = 3,700,396), and the number of F400 prescription claims decreased by − 7.7% (n = 28,745,468) in 2016 as compared to 2015 (n = 31,142,484), for seven or more types of drugs. The drug insurance claim rate among people over the age of 65 was 74.2% to F100 and 77.9% to F400, and this age group represented the highest proportion among all age groups. Conclusions The rate of health insurance claims for multidrug prescriptions clearly decreased after the institution of policy interventions to optimize the use of seven or more types of drugs. The present study suggests that the prescription fee restriction could reduce the rate of multidrug prescriptions and consequent decreases the risk of adverse drug-related events in polypharmacy patients. Key messages Policy interventions related to the optimization of drug prescriptions encourage behavioral factors of healthcare providers. Polypharmacy treatment must be established through prescriptions information linkage between clinical practices and community.


2016 ◽  
Vol 144 (11) ◽  
pp. 2260-2267 ◽  
Author(s):  
S. TANIHARA ◽  
S. SUZUKI

SUMMARYBecause sentinel surveillance systems cannot obtain information about patients who visit non-sentinel medical facilities, the characteristics of patients identified by these systems may be biased. In this study, we evaluated the representativeness of a methicillin-resistant Staphylococcus aureus (MRSA) surveillance system using health insurance claim (HIC) data, which does not depend on physician notification. We calculated the age-specific incidence of MRSA patients using data from the Japan Nosocomial Infections Surveillance (JANIS) programme, which is based on sentinel surveillance systems, and inpatient HICs submitted to employee health insurance organizations in 2011, and then computed age-specific incidence ratios between the HIC and JANIS data. Age-specific MRSA incidence in both datasets followed J-shaped curves with similar shapes. For all age groups, the ratios between HIC and JANIS data were around 10. These findings indicate that JANIS notification of MRSA cases was not affected by patients’ age.


Author(s):  
Young-Taek Park ◽  
Yeon Sook Kim ◽  
Yun-Jung Heo ◽  
Jae-Ho Lee ◽  
Hyejung Chang

Background Many features of health care organizations (HCOs) have been identified to be associated with health information exchange (HIE), but subcategories of organizational factors focusing on nurse workforces still need to be identified. The objective of this study is to investigate the association of number of nurses with HIE use in Korea. Methods This study had a retrospective study design and used health insurance claim data from June 1, 2016 to June 30, 2018. The unit of analysis was the HCO, and any health insurance claims having HIE were counted by HCO. There were a total of 1490 HCOs having any HIE and 24 026 HCOs not having HIE. For statistical analysis, two-part model was used: logistic regression for HIE participation and the generalized linear model for the volume of HIE use. Results HIE was used by 44.6% of general hospitals, and 8.6% and 5.3% of small hospitals and clinics, respectively. Both HIE use and its volume were significantly positively associated with nurse variables. The use of HIE was significantly positively associated with nurse-to-bed ratio in general hospitals (OR 1.028; 1.016 to 1.041) and in small hospitals (OR 1.021; 1.016 to 1.027), and with the number of nurses (OR 1.041; 1.028 to 1.054) in clinics (P<.001). The volume of HIE use was also positively associated with nurse-to-bed ratio in general hospitals (OR 1.010; 1.004 to 1.017) and in small hospitals (OR 1.014; 1.006 to 1.022), and with the number of nurses (OR 1.055; 1.037 to 1.073) in clinics (P<.01). Conclusion This study found that there was a low rate of HIE use in small hospitals and clinics. The number of nurses was critically associated with the use of HIE and the volume of HIE claims. HIE policy makers need to be aware of this factor in seeking to accelerate HIE.


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