Yang Yulong, Wang Gang-Ao, Fang Shuzhen, Li Xiang, Ding Yufeng, Song Yuqi, He Wei, Rao Zhihong, Diao Ke, Zhu Xiaolei, Yang Wenming
Department of Neurology, The First Affiliated Hospital of Anhui University of Traditional Chinese Medicine, Hefei, Anhui, China.
School of Information and Artificial Intelligence, Anhui Agricultural University, Hefei, Anhui, China.
Front Neurol. 2024 Jun 19;15:1418474. doi: 10.3389/fneur.2024.1418474. eCollection 2024.
Wilson disease (WD) is a rare autosomal recessive disorder caused by a mutation in the gene. Neurological symptoms are one of the most common symptoms of WD. This study aims to construct a model that can predict the occurrence of neurological symptoms by combining clinical multidimensional indicators with machine learning methods.
The study population consisted of WD patients who received treatment at the First Affiliated Hospital of Anhui University of Traditional Chinese Medicine from July 2021 to September 2023 and had a Leipzig score ≥ 4 points. Indicators such as general clinical information, imaging, blood and urine tests, and clinical scale measurements were collected from patients, and machine learning methods were employed to construct a prediction model for neurological symptoms. Additionally, the SHAP method was utilized to analyze clinical information to determine which indicators are associated with neurological symptoms.
In this study, 185 patients with WD (of whom 163 had neurological symptoms) were analyzed. It was found that using the eXtreme Gradient Boosting (XGB) to predict achieved good performance, with an MCC value of 0.556, ACC value of 0.929, AUROC value of 0.835, and AUPRC value of 0.975. Brainstem damage, blood creatinine (Cr), age, indirect bilirubin (IBIL), and ceruloplasmin (CP) were the top five important predictors. Meanwhile, the presence of brainstem damage and the higher the values of Cr, Age, and IBIL, the more likely neurological symptoms were to occur, while the lower the CP value, the more likely neurological symptoms were to occur.
To sum up, the prediction model constructed using machine learning methods to predict WD cirrhosis has high accuracy. The most important indicators in the prediction model were brainstem damage, Cr, age, IBIL, and CP. It provides assistance for clinical decision-making.
肝豆状核变性(WD)是一种由基因突变引起的罕见常染色体隐性疾病。神经症状是WD最常见的症状之一。本研究旨在构建一个通过将临床多维指标与机器学习方法相结合来预测神经症状发生的模型。
研究人群包括2021年7月至2023年9月在安徽中医药大学第一附属医院接受治疗且莱比锡评分≥4分的WD患者。收集患者的一般临床信息、影像学、血液和尿液检查以及临床量表测量等指标,并采用机器学习方法构建神经症状预测模型。此外,利用SHAP方法分析临床信息以确定哪些指标与神经症状相关。
本研究分析了185例WD患者(其中163例有神经症状)。发现使用极端梯度提升(XGB)进行预测具有良好性能,MCC值为0.556,ACC值为0.929,AUROC值为0.835,AUPRC值为0.975。脑干损伤、血肌酐(Cr)、年龄、间接胆红素(IBIL)和铜蓝蛋白(CP)是最重要的五个预测因素。同时,存在脑干损伤以及Cr、年龄和IBIL值越高,发生神经症状的可能性越大,而CP值越低,发生神经症状的可能性越大。
综上所述,使用机器学习方法构建的预测WD神经症状的模型具有较高准确性。预测模型中最重要的指标是脑干损伤、Cr、年龄、IBIL和CP。它为临床决策提供了帮助。