使用深度学习算法分析前驱医疗和处方数据预测帕金森病。

IF 2.9 3区 医学 Q2 CLINICAL NEUROLOGY Journal of Clinical Neurology Pub Date : 2025-01-01 DOI:10.3988/jcn.2024.0175
Youngwook Koo, Minki Kim, Woong-Woo Lee
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引用次数: 0

摘要

背景与目的:帕金森病(PD)以多种前驱症状为特征,这些症状大多是回顾性研究。虽然一些症状,如快速眼动睡眠行为障碍是非常特殊的,但其他症状很常见。这使得仅根据特异性较低的前驱症状来预测PD风险具有挑战性。通过使用复杂的深度学习技术分析大量可用信息,可以提高仅使用不太特定症状时的预测准确性。本研究旨在提高基于深度学习的筛查在使用医疗索赔数据(包括处方信息)检测前驱PD方面的性能。方法:我们从韩国国民健康保险队列数据中抽样了820名PD患者和8200名年龄和性别匹配的非PD对照组。使用诊断代码、药物代码和前驱期的各种组合开发了一种深度学习算法。结果:在第3年至第0年的前驱期,仅使用诊断代码预测PD的准确率为0.937。增加同期用药代码未提高准确率(0.931-0.935)。对于较早的前驱期(-6年至-3年),仅使用诊断代码时,PD预测的准确性降至0.890。纳入所有药物编码数据后,准确率显著提高至0.922。结论:结合前驱诊断和药物编码的深度学习算法在PD筛查中是有效的。为那些有患帕金森病风险的人开发一个自动收集医疗索赔数据的监测系统可能是具有成本效益的。这种方法可以通过将重点放在最合适的候选药物纳入准确的诊断测试中,从而简化开发改善疾病药物的过程。
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Predicting Parkinson's Disease Using a Deep-Learning Algorithm to Analyze Prodromal Medical and Prescription Data.

Background and purpose: Parkinson's disease (PD) is characterized by various prodromal symptoms, and these symptoms are mostly investigated retrospectively. While some symptoms such as rapid eye movement sleep behavior disorder are highly specific, others are common. This makes it challenging to predict those at risk of PD based solely on less-specific prodromal symptoms. The prediction accuracy when using only less-specific symptoms can be improved by analyzing the vast amount of information available using sophisticated deep-learning techniques. This study aimed to improve the performance of deep-learning-based screening in detecting prodromal PD using medical-claims data, including prescription information.

Methods: We sampled 820 PD patients and 8,200 age- and sex-matched non-PD controls from Korean National Health Insurance cohort data. A deep-learning algorithm was developed using various combinations of diagnostic codes, medication codes, and prodromal periods.

Results: During the prodromal period from year -3 to year 0, predicting PD using only diagnostic codes yielded a high accuracy of 0.937. Adding medication codes for the same period did not increase the accuracy (0.931-0.935). For the earlier prodromal period (year -6 to year -3), the accuracy of PD prediction decreased to 0.890 when using only diagnostic codes. The inclusion of all medication-codes data increased that accuracy markedly to 0.922.

Conclusions: A deep-learning algorithm using both prodromal diagnostic and medication codes was effective in screening PD. Developing a surveillance system with automatically collected medical-claims data for those at risk of developing PD could be cost-effective. This approach could streamline the process of developing disease-modifying drugs by focusing on the most-appropriate candidates for inclusion in accurate diagnostic tests.

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来源期刊
Journal of Clinical Neurology
Journal of Clinical Neurology 医学-临床神经学
CiteScore
4.50
自引率
6.50%
发文量
0
审稿时长
>12 weeks
期刊介绍: The JCN aims to publish the cutting-edge research from around the world. The JCN covers clinical and translational research for physicians and researchers in the field of neurology. Encompassing the entire neurological diseases, our main focus is on the common disorders including stroke, epilepsy, Parkinson''s disease, dementia, multiple sclerosis, headache, and peripheral neuropathy. Any authors affiliated with an accredited biomedical institution may submit manuscripts of original articles, review articles, and letters to the editor. The JCN will allow clinical neurologists to enrich their knowledge of patient management, education, and clinical or experimental research, and hence their professionalism.
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