Predicting length of stay and mortality among hospitalized patients with type 2 diabetes mellitus and hypertension

BACKGROUND Type 2 diabetes mellitus (T2DM) and hypertension (HTN), both non-communicable diseases, are leading causes of death globally, with more imbalances in lower middle-income countries. Furthermore, poor treatment and management are known to lead to intensified healthcare utilization and increased medical care costs and impose a significant societal burden, in these countries, including Indonesia. Predicting future clinical outcomes can determine the line of treatment and value of healthcare costs, while ensuring effective patient care. In this paper, we present the prediction of length of stay (LoS) and mortality among hospitalized patients at a tertiary referral hospital in Tasikmalaya, Indonesia, between 2016 and 2019. We also aimed to determine how socio-demographic characteristics, and T2DM- or HTN-related comorbidities affect inpatient LoS and mortality. METHODS We analyzed insurance claims data of 4376 patients with T2DM or HTN hospitalized in the referral hospital. We used four prediction models based on machine-learning algorithms for LoS prediction, in relation to disease severity, physician-in-charge, room type, co-morbidities, and types of procedures performed. We used five classifiers based on multilayer perceptron (MLP) to predict inpatient mortality and compared them according to training time, testing time, and Area under Receiver Operative Curve (AUROC). Classifier accuracy measures, which included positive predictive value (PPV), negative predictive value (NPV), F-Measure, and recall, were used as performance evaluation methods. RESULTS A Random forest best predicted inpatient LoS (R2, 0.70; root mean square error [RMSE], 1.96; mean absolute error [MAE], 0.935), and the gradient boosting regression model also performed similarly (R2, 0.69; RMSE, 1.96; MAE, 0.935). For inpatient mortality, best results were observed using MLP with back propagation (AUROC 0.899; 69.33 and 98.61 for PPV and NPV, respectively). The other classifiers, stochastic gradient descent with regression loss function, Huber, and random forest models all showed an average performance. CONCLUSIONS Linear regression model best predicted LoS and mortality was best predicted using MLP. Patients with primary diseases such as T2DM or HTN may have comorbidities that can prolong inpatient LoS. Physicians play an important role in disseminating health related information. These predictions could assist in the development of health policies and strategies that reduce disease burden in resource-limited settings.

[1]  F. McAlister,et al.  Cardiovascular Outcomes in Framingham Participants With Diabetes: The Importance of Blood Pressure , 2011, Hypertension.

[2]  F. Wolf Standards of Medical Care in Diabetes—2014 , 2013, Diabetes Care.

[3]  Michael J. Pencina,et al.  The Role of Physicians in the Era of Predictive Analytics. , 2015, JAMA.

[4]  Yan Liu,et al.  Benchmarking deep learning models on large healthcare datasets , 2018, J. Biomed. Informatics.

[5]  K. Peltzer,et al.  The prevalence, awareness, treatment, and control of hypertension among adults: the first cross-sectional national population-based survey in Laos , 2019, Vascular health and risk management.

[6]  Kristy Iglay,et al.  Prevalence and co-prevalence of comorbidities among patients with type 2 diabetes mellitus , 2016, Current medical research and opinion.

[7]  A. Dans,et al.  The rise of chronic non-communicable diseases in southeast Asia: time for action , 2011, The Lancet.

[8]  A. Renzaho,et al.  The Hospitalization Costs of Diabetes and Hypertension Complications in Zimbabwe: Estimations and Correlations , 2016, Journal of diabetes research.

[9]  C. Chaou,et al.  Predicting Length of Stay among Patients Discharged from the Emergency Department—Using an Accelerated Failure Time Model , 2017, PloS one.

[10]  Dongfeng Zhang,et al.  Fruit and Vegetables Consumption and Risk of Hypertension: A Meta‐Analysis , 2016, Journal of clinical hypertension.

[11]  Guijing Wang,et al.  Hospitalization costs associated with hypertension as a secondary diagnosis among insured patients aged 18-64 years. , 2010, American journal of hypertension.

[12]  D. Bell Hypertension and diabetes: a toxic combination. , 2008, Endocrine practice : official journal of the American College of Endocrinology and the American Association of Clinical Endocrinologists.

[13]  H A Pincus,et al.  Comparing the national economic burden of five chronic conditions. , 2001, Health affairs.

[14]  Luc Noyez,et al.  Preoperative prediction of prolonged stay in the intensive care unit for coronary bypass surgery. , 2004, European journal of cardio-thoracic surgery : official journal of the European Association for Cardio-thoracic Surgery.

[15]  F. Nieto,et al.  Hypertension and antihypertensive therapy as risk factors for type 2 diabetes mellitus , 2000 .

[16]  Andy H. Lee,et al.  A robustified modeling approach to analyze pediatric length of stay. , 2005, Annals of epidemiology.

[17]  Morton B. Brown,et al.  The direct medical cost of type 2 diabetes. , 2003, Diabetes care.

[18]  E. Vartiainen,et al.  Long‐term cost and life‐expectancy consequences of hypertension , 1998, Journal of hypertension.

[19]  Hari Kusnanto,et al.  How is Indonesia coping with its epidemic of chronic noncommunicable diseases? A systematic review with meta-analysis , 2017, PloS one.

[20]  Ismil Khairi Lubis,et al.  Analisis Length Of Stay (Los) Berdasarkan Faktor Prediktor Pada Pasien DM Tipe II di RS PKU Muhammadiyah Yogyakarta , 2018 .

[21]  B. Heniford,et al.  Factors affecting length of stay following colonic resection. , 2008, The Journal of surgical research.

[22]  T. Gilmer,et al.  Predictors of health care costs in adults with diabetes. , 2005, Diabetes care.

[23]  K. Choi,et al.  Prevalence and trends of metabolic syndrome in Korea: Korean National Health and Nutrition Survey 1998–2001 , 2007, Diabetes, obesity & metabolism.

[24]  S. Flessa,et al.  Costing of diabetes mellitus type II in Cambodia , 2014, Health Economics Review.

[25]  Standards of Medical Care for Patients With Diabetes Mellitus , 1998, Diabetes Care.

[26]  A. Arredondo,et al.  Health care costs and financial consequences of epidemiological changes in chronic diseases in Latin America: evidence from Mexico. , 2005, Public health.

[27]  Y. Greenman,et al.  Prevalence of hypertension in type 2 diabetes mellitus: impact of the tightening definition of high blood pressure and association with confounding risk factors. , 2006, Journal of the cardiometabolic syndrome.

[28]  M A Koopmanschap,et al.  Resource consumption and costs in Dutch patients with Type 2 diabetes mellitus. Results from 29 general practices , 2002, Diabetic medicine : a journal of the British Diabetic Association.

[29]  L. Gaal,et al.  Assessing the impact of complications on the costs of Type II diabetes , 2002, Diabetologia.

[30]  D. Purnamasari The Emergence of Non-communicable Disease in Indonesia. , 2018, Acta medica Indonesiana.

[31]  R. Ferri,et al.  Cognitive Behavioral Therapy for Insomnia in Breast Cancer Survivors: A Review of the Literature , 2016, Front. Psychol..

[32]  Abdullah Al Mamun,et al.  Prevalence, Awareness, Treatment and Control of Hypertension in Indonesian Adults Aged ≥40 Years: Findings from the Indonesia Family Life Survey (IFLS) , 2016, PloS one.

[33]  Zhonghua Wang,et al.  Socioeconomic Factors and Inequality in the Prevalence and Treatment of Diabetes among Middle-Aged and Elderly Adults in China , 2018, Journal of diabetes research.

[34]  D N Mendelson,et al.  Health care expenditures for people with diabetes mellitus, 1992. , 1994, The Journal of clinical endocrinology and metabolism.

[35]  C. Levi,et al.  A prospective study of predictors of prolonged hospital stay and disability after stroke , 2003, Journal of Clinical Neuroscience.

[36]  Li Liang,et al.  Predictors of hospital length of stay in heart failure: findings from Get With the Guidelines. , 2011, Journal of cardiac failure.

[37]  Ismil Khairi Lubis,et al.  Perbedaan Length of Stay (LOS) Pasien Diabetes Mellitus Berdasarkan Komplikasi Di RSUP Dr. Sardjito Yogyakarta , 2019, Jurnal Manajemen Informasi Kesehatan Indonesia.