Early diagnosis of persons with von Willebrand disease using a machine learning algorithm and real-world data.

IF 2.3 4区 医学 Q2 HEMATOLOGY
Expert Review of Hematology Pub Date : 2024-06-01 Epub Date: 2024-05-24 DOI:10.1080/17474086.2024.2354925
Robert F Sidonio, Anan Lu, Sarah Hale, Jorge Caicedo, Mike Bullano, Shan Xing
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引用次数: 0

Abstract

Background: Von Willebrand disease (VWD) is underdiagnosed, often delaying treatment. VWD claims coding is limited and includes no severity qualifiers; improved identification methods for VWD are needed. The aim of this study is to identify and characterize undiagnosed symptomatic persons with VWD in the US from medical insurance claims using predictive machine learning (ML) models.

Research design and methods: Diagnosed and potentially undiagnosed VWD cohorts were defined using Komodo longitudinal US claims data (January 2015-March 2020). ML models were built using key characteristics predictive of VWD diagnosis from the diagnosed cohort. Two ML models predicted VWD diagnosis with the highest accuracy in females (random forest; 84%) and males (gradient boosting machine; 85%). Undiagnosed persons suspected to have VWD were identified using an 80% cutoff probability; profiles of key characteristics were constructed.

Results: The trained ML models were applied to the undiagnosed cohort (28,463 females; 20,439 males) with suspected VWD. Fifty-two percent of undiagnosed females had heavy menstrual bleeding, a key pre-diagnosis symptom. Undiagnosed males tended to have more frequent medical procedures, hospitalizations, and emergency room visits compared with undiagnosed females.

Conclusions: ML algorithms successfully identified potentially undiagnosed symptomatic people with VWD, although many may remain undiagnosed and undertreated. External validation of the algorithms is recommended.

利用机器学习算法和真实世界数据早期诊断 von Willebrand 疾病患者。
背景:冯-威廉氏病(VWD)诊断率低,常常延误治疗。VWD的索赔编码有限,包括没有严重程度限定词;需要改进VWD的识别方法。本研究的目的是:利用医疗保险索赔识别和描述美国未确诊的有症状的 VWD 患者,以开发预测性机器学习(ML)模型:研究设计与方法:利用 Komodo 美国纵向索赔数据(2015 年 1 月至 2020 年 3 月)定义已确诊和可能未确诊的 VWD 队列。利用已确诊队列中可预测 VWD 诊断的关键特征建立了 ML 模型。两个 ML 模型对女性(随机森林;84%)和男性(梯度提升机;85%)的 VWD 诊断预测准确率最高。未确诊的疑似 VWD 患者以 80% 的临界概率被识别出来,并建立了关键特征档案:将训练有素的 ML 模型应用于疑似 VWD 的未确诊人群(28463 名女性;20439 名男性)。52%的未确诊女性有大量月经出血,这是确诊前的一个主要症状。与未确诊女性相比,未确诊男性的医疗程序、住院和急诊就诊频率更高:ML算法成功识别了潜在的未诊断症状的VWD患者,尽管许多人可能仍未得到诊断和治疗。建议对算法进行外部验证。
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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来源期刊
CiteScore
4.70
自引率
3.60%
发文量
98
审稿时长
6-12 weeks
期刊介绍: Advanced molecular research techniques have transformed hematology in recent years. With improved understanding of hematologic diseases, we now have the opportunity to research and evaluate new biological therapies, new drugs and drug combinations, new treatment schedules and novel approaches including stem cell transplantation. We can also expect proteomics, molecular genetics and biomarker research to facilitate new diagnostic approaches and the identification of appropriate therapies. Further advances in our knowledge regarding the formation and function of blood cells and blood-forming tissues should ensue, and it will be a major challenge for hematologists to adopt these new paradigms and develop integrated strategies to define the best possible patient care. Expert Review of Hematology (1747-4086) puts these advances in context and explores how they will translate directly into clinical practice.
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