Machine-learning models for diagnosis of rotator cuff tears in osteoporosis patients based on anteroposterior X-rays of the shoulder joint

IF 2.5 4区 医学 Q3 BIOCHEMICAL RESEARCH METHODS
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引用次数: 0

Abstract

Objective

This study aims to diagnose Rotator Cuff Tears (RCT) and classify the severity of RCT in patients with Osteoporosis (OP) through the analysis of shoulder joint anteroposterior (AP) X-ray-based localized proximal humeral bone mineral density (BMD) measurements and clinical information based on machine learning (ML) models.

Methods

A retrospective cohort of 89 patients was analyzed, including 63 with both OP and RCT (OPRCT) and 26 with OP only. The study analyzed a series of shoulder radiographs from April 2021 to April 2023. Grayscale values were measured after plotting ROIs based on AP X-rays of shoulder joint. Five kinds of ML models were developed and compared based on their performance in predicting the occurrence and severity of RCT from ROIs' greyscale values and clinical information (age, gender, advantage side, lumbar BMD, and acromion morphology (AM)). Further analysis using SHAP values illustrated the significant impact of selected features on model predictions.

Results

R1-6 had a positive correlation with BMD respectively. The nine variables, including greyscale R1-6, age, BMD, and AM, were used in the prediction models. The RF model was determined to be superior in effectively diagnosing RCT in OP patients, with high AUC scores of 0.998, 0.889, and 0.95 in the training, validation, and testing sets, respectively. SHAP values revealed that the most influential factors on the diagnostic outcomes were the grayscale values of all cancellous bones in ROIs. A column-line graph prediction model based on nine variables was constructed, and DCA curves indicated that RCT prediction in OP patients was favored based on this model. Furthermore, the RF model was also the most superior in predicting the types of RCT within the OPRCT group, with an accuracy of 86.364% and 73.684% in the training and test sets, respectively. SHAP values indicated that the most significant factor affecting the predictive outcomes was the AM, followed by the grayscale values of the greater tubercle, among others.

Conclusions

ML models, particularly the RF algorithm, show significant promise in diagnosing RCT occurrence and severity in OP patients using conventional shoulder X-rays based on the nine variables. This method presents a cost-effective, accessible, and non-invasive diagnostic strategy that has the potential to substantially enhance the early detection and management of RCT in OP patient population.

基于肩关节前向X光片诊断骨质疏松症患者肩袖撕裂的机器学习模型
本研究旨在通过分析基于肩关节前后位(AP)X 光片的局部肱骨近端骨矿密度(BMD)测量值和基于机器学习(ML)模型的临床信息,诊断肩袖撕裂(RCT)并对骨质疏松症(OP)患者的 RCT 严重程度进行分类。研究分析了2021年4月至2023年4月期间的一系列肩部X光片。根据肩关节的 AP X 光片绘制 ROI 后测量灰度值。根据 ROI 的灰度值和临床信息(年龄、性别、优势侧、腰椎 BMD 和肩峰形态 (AM))建立了五种 ML 模型,并比较了这些模型在预测 RCT 的发生和严重程度方面的性能。使用 SHAP 值进行的进一步分析表明了所选特征对模型预测的重要影响。结果R1-6 分别与 BMD 呈正相关。预测模型中使用了九个变量,包括灰度 R1-6、年龄、BMD 和 AM。结果表明,RF 模型在有效诊断 OP 患者的 RCT 方面更具优势,其训练集、验证集和测试集的 AUC 分别高达 0.998、0.889 和 0.95。SHAP 值显示,对诊断结果影响最大的因素是 ROI 中所有松质骨的灰度值。基于九个变量构建的柱状线图预测模型和 DCA 曲线表明,基于该模型对 OP 患者的 RCT 预测更有利。此外,RF模型在预测OPRCT组中的RCT类型方面也最为出色,在训练集和测试集中的准确率分别为86.364%和73.684%。SHAP值表明,影响预测结果的最重要因素是AM,其次是大结节的灰度值等。结论ML模型,尤其是RF算法,在根据九个变量使用常规肩部X光片诊断OP患者RCT的发生和严重程度方面显示出了巨大的潜力。这种方法是一种经济、方便、无创的诊断策略,有望大大提高对 OP 患者的 RCT 早期检测和管理水平。
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来源期刊
SLAS Technology
SLAS Technology Computer Science-Computer Science Applications
CiteScore
6.30
自引率
7.40%
发文量
47
审稿时长
106 days
期刊介绍: SLAS Technology emphasizes scientific and technical advances that enable and improve life sciences research and development; drug-delivery; diagnostics; biomedical and molecular imaging; and personalized and precision medicine. This includes high-throughput and other laboratory automation technologies; micro/nanotechnologies; analytical, separation and quantitative techniques; synthetic chemistry and biology; informatics (data analysis, statistics, bio, genomic and chemoinformatics); and more.
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