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使用机器学习方法预测重型β地中海贫血患者的心脏和肝脏铁过载

Prediction of Heart and Liver Iron Overload in β-Thalassemia Major Patients Using Machine Learning Methods.

作者信息

Asmarian Naeimehossadat, Kamalipour Alireza, Hosseini-Bensenjan Mahnaz, Karimi Mehran, Haghpanah Sezaneh

机构信息

Anesthesiology and Critical Care Research Center, Shiraz University of Medical Sciences, Shiraz, Iran.

Hamilton Glaucoma Center, Shiley Eye Institute, Viterbi Family Department of Ophthalmology, University of California, San Diego, CA, USA.

出版信息

Hemoglobin. 2022 Nov;46(6):303-307. doi: 10.1080/03630269.2022.2158100. Epub 2023 Feb 7.

Abstract

Patients with β-thalassemia major (β-TM) face a wide range of complications as a result of excess iron in vital organs, including the heart and liver. Our aim was to find the best predictive machine learning (ML) model for assessing heart and liver iron overload in patients with β-TM. Data from 624 β-TM patients were entered into three ML models using random forest (RF), gradient boost model (GBM), and logistic regression (LR). The data were classified and analyzed by R software. Four evaluation metrics of predictive performance were measured: sensitivity, specificity, accuracy, and area under the curve (AUC), operating characteristic curve. For heart iron overload, the LR had the highest predictive performance based on AUC: 0.68 [95% CI (95% confidence interval): 0.60, 0.75]. The GBM also had the highest specificity (69.0%) and accuracy (67.0%). Most sensitivity is also acquired with LR (75.0%). For liver iron overload, the highest performance based on AUC was observed with RF, AUC: 0.68 (95% CI: 0.59, 0.76). The RF showed the highest accuracy (66.0%) and specificity (66.0%), while the LR had the highest sensitivity (84.0%). Ferritin, duration of transfusion, and age were determined as the most effective predictors of iron overload in both heart and liver. Logistic regression LR was determined to be the strongest method to predict cardiac and RF values for liver iron overload in patients with β-TM. Older thalassemia patients with a high serum ferritin (SF) level and a longer duration of transfusion therapy were more prone to heart and liver iron overload.

摘要

重型β地中海贫血(β-TM)患者因重要器官(包括心脏和肝脏)中铁过量而面临多种并发症。我们的目标是找到评估β-TM患者心脏和肝脏铁过载的最佳预测性机器学习(ML)模型。将624例β-TM患者的数据输入使用随机森林(RF)、梯度提升模型(GBM)和逻辑回归(LR)的三个ML模型中。数据通过R软件进行分类和分析。测量了预测性能的四个评估指标:敏感性、特异性、准确性和曲线下面积(AUC)、操作特征曲线。对于心脏铁过载,基于AUC,LR具有最高的预测性能:0.68 [95%置信区间(95% confidence interval):0.60,0.75]。GBM也具有最高的特异性(69.0%)和准确性(67.0%)。LR也获得了最高的敏感性(75.0%)。对于肝脏铁过载,基于AUC观察到RF具有最高性能,AUC:0.68(95% CI:0.59,0.76)。RF显示出最高的准确性(66.0%)和特异性(66.0%),而LR具有最高的敏感性(84.0%)。铁蛋白、输血持续时间和年龄被确定为心脏和肝脏铁过载最有效的预测因素。逻辑回归LR被确定为预测β-TM患者心脏铁过载和肝脏铁过载RF值的最强方法。血清铁蛋白(SF)水平高且输血治疗持续时间长的老年地中海贫血患者更容易出现心脏和肝脏铁过载。

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