增强自发性脑出血患者的死亡率预测:非对比计算机断层扫描的放射组学和监督机器学习

IF 1.8 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Antonio López-Rueda , María-Ángeles Rodríguez-Sánchez , Elena Serrano , Javier Moreno , Alejandro Rodríguez , Laura Llull , Sergi Amaro , Laura Oleaga
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引用次数: 0

摘要

本研究旨在建立基于放射组学的监督机器学习模型来预测自发性脑出血(siich)患者的死亡率。方法回顾性分析前瞻性收集的2016年1月至2018年4月在单一学术综合脑卒中中心连续入院的siich患者的临床登记。我们对105例患者的105个放射学特征进行了深入分析。在识别和处理缺失值之后,将放射组学值缩放到0-1,以训练不同的分类器。将样本分层分为80-20 %训练检验和验证队列。随机森林(RF)、k近邻(KNN)和支持向量机(SVM)分类器,以及几种特征选择方法和超参数优化策略,用于对住院期间死亡率或存活率的二元结果进行分类。采用十倍分层交叉验证法对模型进行训练,并计算平均指标。结果采用“DropOut+SelectKBest”特征选择策略、未进行超参数优化的rf、KNN和SVM在验证数据集上以最少的放射学特征和最简化的模型表现出最佳性能,灵敏度范围为0.90 ~ 0.95,AUC范围为0.97 ~ 1。对于混淆矩阵,SVM模型没有预测到任何假阴性检验(阴性预测值1)。结论基于放射组学的监督式机器学习模型可以预测sICH患者入院期间的死亡率。采用“DropOut+SelectKBest”特征选择策略且不进行超参数优化的SVM是检测siich患者入院死亡率的最佳简化模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing mortality prediction in patients with spontaneous intracerebral hemorrhage: Radiomics and supervised machine learning on non-contrast computed tomography

Purpose

This study aims to develop a Radiomics-based Supervised Machine-Learning model to predict mortality in patients with spontaneous intracerebral hemorrhage (sICH).

Methods

Retrospective analysis of a prospectively collected clinical registry of patients with sICH consecutively admitted at a single academic comprehensive stroke center between January-2016 and April-2018. We conducted an in-depth analysis of 105 radiomic features extracted from 105 patients. Following the identification and handling of missing values, radiomics values were scaled to 0–1 to train different classifiers. The sample was split into 80–20 % training-test and validation cohort in a stratified fashion. Random Forest(RF), K-Nearest Neighbor(KNN), and Support Vector Machine(SVM) classifiers were evaluated, along with several feature selection methods and hyperparameter optimization strategies, to classify the binary outcome of mortality or survival during hospital admission. A tenfold stratified cross-validation method was used to train the models, and average metrics were calculated.

Results

RF, KNN, and SVM, with the "DropOut+SelectKBest" feature selection strategy and no hyperparameter optimization, demonstrated the best performances with the least number of radiomic features and the most simplified models, achieving a sensitivity range between 0.90 and 0.95 and AUC range from 0.97 to 1 on the validation dataset. Regarding the confusion matrix, the SVM model did not predict any false negative test (negative predicted value 1).

Conclusion

Radiomics-based Supervised Machine Learning models can predict mortality during admission in patients with sICH. SVM with the "DropOut+SelectKBest" feature selection strategy and no hyperparameter optimization was the best simplified model to detect mortality during admission in patients with sICH.
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来源期刊
European Journal of Radiology Open
European Journal of Radiology Open Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.10
自引率
5.00%
发文量
55
审稿时长
51 days
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