Personalized Disease Screening Decisions Considering a Chronic Condition

Manag. Sci. Pub Date : 2022-03-25 DOI:10.1287/mnsc.2022.4336
Ali Hajjar, Oğuzhan Alagöz
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引用次数: 9

Abstract

Clinical practice guidelines do not sufficiently address the needs of patients with chronic conditions as these guidelines focus on single disease management and ignore unique patient-specific conditions. As a result, a nonpersonalized approach to the management of the patients with chronic conditions leads to adverse events and increases the financial burden on the healthcare system as over 150 million Americans experience chronic conditions. To this end, we develop a stochastic modeling framework to personalize the disease screening decisions for patients with or at risk for developing a chronic condition and provide an exact solution algorithm. We consider the optimal management of the screening decisions for an index disease (e.g., breast cancer, colorectal cancer, human immunodeficiency virus, etc.) while accounting for the existence of a chronic condition (e.g., hypertension, diabetes, Alzheimer’s disease, etc.). Our modeling framework is particularly useful for the cases where the chronic condition affects the risk of the index disease. In a case study using real breast cancer epidemiology data, we demonstrate how our modeling framework can be used to personalize breast cancer screening for women with type 2 diabetes. In addition to providing a personalized breast cancer screening schedule for women with diabetes, we find some important policy insights that were not previously recognized by the medical community. More specifically, we find that compared with women without diabetes, women with diabetes should be screened less aggressively, but screening should end at similar ages. We also find that adherence to the optimal screening policy is more crucial for women with diabetes compared with nondiabetic women. Our main insight on screening recommendations also has important resource implications as it leads to fewer screening mammograms. That is, compared with the current national breast cancer screening guidelines, the optimal breast cancer screening policy for women with diabetes could save the healthcare system approximately 2.6 million mammograms annually. This paper was accepted by Stefan Scholtes, healthcare management.
考虑到慢性病的个性化疾病筛查决策
临床实践指南不能充分解决慢性病患者的需求,因为这些指南侧重于单一疾病的管理,而忽视了独特的患者特异性疾病。因此,非个性化的慢性病患者管理方法导致不良事件,并增加医疗保健系统的经济负担,因为超过1.5亿美国人患有慢性病。为此,我们开发了一个随机建模框架,为患有或有发展慢性疾病风险的患者个性化疾病筛查决策,并提供了一个精确的解决算法。我们考虑对指标疾病(如乳腺癌、结直肠癌、人类免疫缺陷病毒等)的筛查决策进行最佳管理,同时考虑慢性病(如高血压、糖尿病、阿尔茨海默病等)的存在。我们的建模框架对于慢性病影响指数疾病风险的情况特别有用。在一个使用真实乳腺癌流行病学数据的案例研究中,我们展示了我们的建模框架如何用于个性化2型糖尿病女性的乳腺癌筛查。除了为患有糖尿病的女性提供个性化的乳腺癌筛查计划外,我们还发现了一些重要的政策见解,这些见解以前没有被医学界认识到。更具体地说,我们发现与没有糖尿病的女性相比,患有糖尿病的女性应该进行较少的筛查,但筛查应该在相似的年龄结束。我们还发现,与非糖尿病女性相比,糖尿病女性坚持最佳筛查政策更为重要。我们对筛查建议的主要见解也具有重要的资源含义,因为它导致乳房x光检查的减少。也就是说,与目前的国家乳腺癌筛查指南相比,针对糖尿病女性的最佳乳腺癌筛查政策每年可以为医疗系统节省大约260万次乳房x光检查。本文被医疗管理专业的Stefan Scholtes接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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