Machine Learning-Based Prediction of Delayed Neurological Sequelae in Carbon Monoxide Poisoning Using Automatically Extracted MR Imaging Features.

Grace Yoojin Lee, Chang Hwan Sohn, Dongwon Kim, Sang-Beom Jeon, Jihye Yun, Sungwon Ham, Yoojin Nam, Jieun Yum, Won Young Kim, Namkug Kim
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Abstract

Background and purpose: Delayed neurological sequelae are among the most serious complications of carbon monoxide poisoning. However, no reliable tools are available for evaluating its potential risk. We aimed to assess whether machine learning models using imaging features that were automatically extracted from brain MRI can predict the potential delayed neurological sequelae risk in patients with acute carbon monoxide poisoning.

Materials and methods: This single-center, retrospective, observational study analyzed a prospectively collected registry of acute carbon monoxide poisoning patients who visited our emergency department from April 2011 to December 2015. Overall, 1618 radiomics and 4 lesion-segmentation features from DWI b1000 and ADC images, as well as 62 clinical variables were extracted from each patient. The entire dataset was divided into five subsets, with one serving as the hold-out test set and the remaining four used for training and tuning. Four machine learning models, linear regression, support vector machine, random forest, and extreme gradient boosting, as well as an ensemble model, were trained and evaluated using 20 different data configurations. The primary evaluation metric was the mean and 95% CI of the area under the receiver operating characteristic curve. Shapley additive explanations were calculated and visualized to enhance model interpretability.

Results: Of the 373 patients, delayed neurological sequelae occurred in 99 (26.5%) patients (mean age 43.0 ± 15.2; 62.0% male). The means [95% CIs] of the area under the receiver operating characteristic curve, accuracy, sensitivity, and specificity of the best performing machine learning model for predicting the development of delayed neurological sequelae were 0.88 [0.86-0.9], 0.82 [0.8-0.83], 0.81 [0.79-0.83], and 0.82 [0.8-0.84], respectively. Among imaging features, the presence, size, and number of acute brain lesions on DWI b1000 and ADC images more accurately predicted DNS risk than advanced radiomics features based on shape, texture and wavelet transformation.

Conclusions: Machine learning models developed using automatically extracted brain MRI features with clinical features can distinguish patients at delayed neurological sequelae risk. The models enable effective prediction of delayed neurological sequelae in patients with acute carbon monoxide poisoning, facilitating timely treatment planning for prevention.

Abbreviations: ABL = Acute brain lesion; AUROC = area under the receiver operating characteristic curve; CO = carbon monoxide; DNS = delayed neurological sequelae; LR = logistic regression; ML = machine learning; RF = random forest; SVM = support vector machine; XGBoost = extreme gradient boosting.

基于机器学习的一氧化碳中毒迟发性神经系统后遗症的自动提取MR成像特征预测。
背景与目的:迟发性神经系统后遗症是一氧化碳中毒最严重的并发症之一。然而,没有可靠的工具可用于评估其潜在风险。我们的目的是评估机器学习模型使用从大脑MRI中自动提取的成像特征是否可以预测急性一氧化碳中毒患者潜在的延迟性神经系统后遗症风险。材料与方法:本研究为单中心、回顾性、观察性研究,对2011年4月至2015年12月在急诊科就诊的急性一氧化碳中毒患者进行前瞻性分析。总体而言,从每位患者中提取了来自DWI b1000和ADC图像的1618个放射组学特征和4个病变分割特征,以及62个临床变量。整个数据集被分为五个子集,其中一个子集作为保留测试集,其余四个子集用于训练和调优。四种机器学习模型,线性回归、支持向量机、随机森林和极端梯度增强,以及一个集成模型,使用20种不同的数据配置进行了训练和评估。主要评价指标为受试者工作特征曲线下面积的平均值和95% CI。Shapley加性解释的计算和可视化,以提高模型的可解释性。结果:373例患者中,迟发性神经系统后遗症99例(26.5%)(平均年龄43.0±15.2岁;62.0%的男性)。预测迟发性神经系统后遗症发展的最佳机器学习模型的受试者工作特征曲线下面积、准确性、灵敏度和特异性的均值[95% ci]分别为0.88[0.86-0.9]、0.82[0.8-0.83]、0.81[0.79-0.83]和0.82[0.8-0.84]。在影像学特征中,DWI b1000和ADC图像上急性脑病变的存在、大小和数量比基于形状、纹理和小波变换的高级放射组学特征更准确地预测DNS风险。结论:利用自动提取具有临床特征的脑MRI特征建立的机器学习模型可以区分迟发性神经系统后遗症患者。该模型能够有效预测急性一氧化碳中毒患者的迟发性神经系统后遗症,便于及时制定预防治疗方案。缩写:ABL =急性脑损伤;AUROC =受者工作特性曲线下面积;CO =一氧化碳;迟发性神经后遗症;LR =逻辑回归;ML =机器学习;随机森林;支持向量机;XGBoost =极端梯度增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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