Rare Disease Detection and Physician Targeting: A Factor Graph Machine Learning Approach for Niche Market Targeting

Yong Cai, Qiang Liu, Chao Shi, Yunlong Wang, Fan Zhang
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引用次数: 0

Abstract

A rare disease is any disease that affects a small percentage of the population. The extremely low incidence rate of rare diseases makes it particularly difficult to recognize and diagnose them. A major challenge in the rare disease market is how to target physicians who are potentially involved with patients with a specific rare disease. The existing detection and targeting methods, such as segmentation and profiling, have been developed under an assumption of a large mass market and are thus not suitable for the rare disease market where the classification classes are extremely imbalanced. This paper proposes a factor graphical model approach to predict rare disease physician targets by jointly modeling physician and patient features from different data spaces and explicitly incorporating physician-patient relationship. Through an empirical application in detecting physicians treating hereditary angioedema using big medical claims and prescription data, the proposed approach demonstrates better performances than various benchmark models according to different performance metrics. The graph representation also allows for visual interpretation of the relationship between physicians and patients. This paper contributes to the literature on exploring the benefits of utilizing relational dependencies among entities in healthcare industry.
罕见病检测与医师定位:小众市场定位的因子图机器学习方法
罕见病是指影响一小部分人口的疾病。罕见病的发病率极低,使其特别难以识别和诊断。罕见病市场的一个主要挑战是如何针对那些可能与患有特定罕见病的患者有联系的医生。现有的检测和靶向方法,如segmentation和profiling,都是在假设一个庞大的大众市场的前提下发展起来的,因此不适合罕见病市场,因为罕见病市场的分类类别非常不平衡。本文提出了一种因子图模型方法,通过对不同数据空间的医生和病人特征进行联合建模,并明确地纳入医患关系,来预测罕见病医生目标。通过利用大额医疗索赔和处方数据检测医生治疗遗传性血管性水肿的实证应用,根据不同的性能指标,该方法比各种基准模型表现出更好的性能。图形表示还允许对医生和患者之间的关系进行可视化解释。本文对探讨在医疗保健行业中利用实体之间的关系依赖的好处的文献做出了贡献。
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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