Estimation and Prediction of Hospitalization and Medical Care Costs Using Regression in Machine Learning.
Ahmed I TalobaRasha M Abd El-AzizHuda M AlshanbariAbd Al-Aziz Hosni El-BagouryPublished in: Journal of healthcare engineering (2022)
Medical costs are one of the most common recurring expenses in a person's life. Based on different research studies, BMI, ageing, smoking, and other factors are all related to greater personal medical care costs. The estimates of the expenditures of health care related to obesity are needed to help create cost-effective obesity prevention strategies. Obesity prevention at a young age is a top concern in global health, clinical practice, and public health. To avoid these restrictions, genetic variants are employed as instrumental variables in this research. Using statistics from public huge datasets, the impact of body mass index (BMI) on overall healthcare expenses is predicted. A multiview learning architecture can be used to leverage BMI information in records, including diagnostic texts, diagnostic IDs, and patient traits. A hierarchy perception structure was suggested to choose significant words, health checks, and diagnoses for training phase informative data representations, because various words, diagnoses, and previous health care have varying significance for expense calculation. In this system model, linear regression analysis, naive Bayes classifier, and random forest algorithms were compared using a business analytic method that applied statistical and machine-learning approaches. According to the results of our forecasting method, linear regression has the maximum accuracy of 97.89 percent in forecasting overall healthcare costs. In terms of financial statistics, our methodology provides a predictive method.
Keyphrases
- healthcare
- weight gain
- body mass index
- machine learning
- public health
- global health
- insulin resistance
- weight loss
- metabolic syndrome
- big data
- type diabetes
- high fat diet induced
- artificial intelligence
- clinical practice
- health information
- climate change
- genome wide
- physical activity
- deep learning
- electronic health record
- adipose tissue
- working memory
- risk assessment
- affordable care act
- skeletal muscle
- gene expression
- drug induced
- dna methylation
- health insurance
- human health
- neural network
- data analysis