使用机器学习模型诊断慢性鼻窦炎:分析治疗前患者产生的健康数据以预测主要症状和鼻窦炎。

IF 2.3 3区 医学 Q1 OTORHINOLARYNGOLOGY
American Journal of Rhinology & Allergy Pub Date : 2025-05-01 Epub Date: 2025-03-11 DOI:10.1177/19458924251322081
Arun M Raghavan, Mohamed A Aboueisha, Ion Prohnitchi, David J Cvancara, Ian M Humphreys, Aria Jafari, Waleed M Abuzeid
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引用次数: 0

摘要

背景:慢性鼻窦炎(CRS)的诊断依赖于患者报告的症状和客观的鼻内窥镜和/或计算机断层扫描(CT)结果。许多患者在耳鼻喉科医生或鼻科医生评估时,缺乏证实CRS的客观结果,并且没有这种疾病。目的:我们假设机器学习模型(MLM)可以使用在鼻内科医生指导治疗之前获得的患者报告数据来预测可能的CRS。我们使用机器学习方法利用患者生成的健康数据来预测:(1)lnd - mackay评分(LMS)≥5证明的CT鼻窦炎症的主要终点;(2)LMS≥5和≥2的CRS主要症状的次要终点。方法对某三级鼻科门诊s543例患者进行评估,并行LMS CT成像。在现场评估之前,通过电子平台收集患者报告的结果测量和其他患者数据。三个mlm,一个随机森林分类器,一个深度神经网络和一个极端梯度Boost (XGBoost)算法,在从患者生成的健康数据中提取的预测器上进行训练,并在naïve测试集上进行测试(90:10训练:测试集分割)。进行了交叉验证,并比较了算法与线性回归技术之间的模型性能。结果从患者生成的健康数据中提取了57个预测因子。最佳模型(XGBoost)预测主要终点的曲线下面积(AUC)为71.3%(准确性74.5%,敏感性38.9%,特异性91.9%),预测次要终点的AUC为79.8%(准确性85.5%,敏感性36.4%,特异性97.7%)。这超过了线性回归模型的性能。结论基于患者健康数据的MLM能够准确预测患者可能出现的CRS(≥2个主要症状,LMS≥5个)。通过对更大队列的进一步验证,这种工具可能被耳鼻喉科医生用于临床诊断成像和亚专科鼻科转诊前的筛查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning Models to Diagnose Chronic Rhinosinusitis: Analysis of Pre-Treatment Patient-Generated Health Data to Predict Cardinal Symptoms and Sinonasal Inflammation.

BackgroundThe diagnosis of chronic rhinosinusitis (CRS) relies upon patient-reported symptoms and objective nasal endoscopy and/or computed tomography (CT) findings. Many patients, at the time of evaluation by an otolaryngologist or rhinologist, lack objective findings confirming CRS and do not have this disease.ObjectiveWe hypothesized that a machine learning model (MLM) could predict probable CRS using patient-reported data acquired prior to rhinologist-directed treatment. We leveraged patient-generated health data using a machine learning approach to predict: (1) the primary endpoint of sinonasal inflammation on CT evidenced by a Lund-Mackay score (LMS) ≥ 5 and (2) the secondary endpoint of LMS ≥ 5 and ≥2 cardinal symptoms of CRS.Methods543 patients were evaluated at a tertiary care rhinology clinic and subsequently underwent CT imaging with LMS. Patient-reported outcome measures and additional patient data were collected via an electronic platform prior to in-person evaluation. Three MLMs, a random forest classifier, a deep neural network, and an extreme gradient Boost (XGBoost) algorithm, were trained on predictors drawn from patient-generated health data and tested on a naïve test set (90:10 training:test set split). Cross-validation was executed, and model performance compared between algorithms and with linear regression techniques.Results57 predictors were extracted from the patient-generated health data. The best model (XGBoost) achieved an area-under-the-curve (AUC) of 71.3% (accuracy 74.5%, sensitivity 38.9%, specificity 91.9%) in predicting the primary endpoint, and an AUC of 79.8% (accuracy 85.5%, sensitivity 36.4%, specificity 97.7%) in predicting the secondary endpoint. This exceeded the performance of a linear regression model.ConclusionA MLM using patient-generated health data accurately predicted patients with probable CRS (≥2 cardinal symptoms and LMS ≥ 5). With further validation on a larger cohort, such a tool could potentially be used by otolaryngologists to inform clinical utility of diagnostic imaging and for screening prior to subspecialty Rhinology referral.

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来源期刊
CiteScore
5.60
自引率
11.50%
发文量
82
审稿时长
4-8 weeks
期刊介绍: The American Journal of Rhinology & Allergy is a peer-reviewed, scientific publication committed to expanding knowledge and publishing the best clinical and basic research within the fields of Rhinology & Allergy. Its focus is to publish information which contributes to improved quality of care for patients with nasal and sinus disorders. Its primary readership consists of otolaryngologists, allergists, and plastic surgeons. Published material includes peer-reviewed original research, clinical trials, and review articles.
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