%0 Journal Article %T Medicare Risk Adjustment Coding in U.S. Health Insurance %A Leelakumar Raja Lekkala %J Voice of the Publisher %P 354-364 %@ 2380-7598 %D 2023 %I Scientific Research Publishing %R 10.4236/vp.2023.94028 %X The Medicare Risk Adjustment system is an important feature of the U.S. public health arena that affects medical results, quality care, and medical bills. This study delves into complex issues associated with Medicare risk adjustment coding by applying sophisticated statistical techniques in an effort to understand relevant healthcare data science matters. Background: Healthcare relies on accurate risk assessment for patients, and the Medicare risk adjustment model plays an essential role. The program has ensured that insurers providing care for differing, disease-specific patient¡¯ demographics are properly remunerated. Nevertheless, accurate risk adjustment poses a serious challenge considering the numerous determinants that encompass diagnosis, treatment, and demographic elements. Methods: This paper explores the principles behind Medicare risk adjustment coding, focusing on risk scores, hierarchical condition categories, and historical data. To measure their effectiveness and accuracy, we use artificial intelligence, data analysis, as well as statistical methods. The paper also suggests new measures to enhance the risk adjustment process for the purposes of ensuring reliability as well as fairness. Results: The results demonstrate the strengths and weaknesses of modern Medicare risk adjustment coding methods. This involves finding areas in which more improvement should be added so as to make sure that the system is fair and responsive to the changing world of health. Conclusions: This study shows that in order for healthcare risk adjustment to be improved, data science and statistical methods must be employed. With the healthcare industry progressing, there is great importance in making sure that risk adjustment coding will be precise, credible, and just. This is where our work adds to these efforts and lends critical information to policymakers, healthcare providers, and machine learning professionals looking to enhance the Medicare risk adjustment system. %K Medicare %K Medicaid %K Coding %K AI %K Artificial Intelligence %K Healthcare %K Insurance %K Health Cover %K USA %K U.S. Health Insurance %K Policies %K Policy Insurance %U http://www.scirp.org/journal/PaperInformation.aspx?PaperID=130092