多类别蛛网膜下腔出血严重程度预测:解决罕见预后预测的挑战。

IF 2.5 3区 医学 Q2 CLINICAL NEUROLOGY
Muhammad Mohsin Khan, Adiba Tabassum Chowdhury, Md Shaheenur Islam Sumon, Shaikh Nissaruddin Maheboob, Arshad Ali, Abdul Nasser Thabet, Ghaya Al-Rumaihi, Sirajeddin Belkhair, Ghanem AlSulaiti, Ali Ayyad, Noman Shah, Anwarul Hasan, Shona Pedersen, Muhammad E H Chowdhury
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引用次数: 0

摘要

准确预测蛛网膜下腔出血(SAH)的严重程度对于告知临床决策和改善患者预后至关重要。本研究通过在三阶段分类框架内采用修改的兰金量表(MRS)来解决SAH严重程度分类中数据不平衡的挑战。我们采用三阶段方法对SAH的严重程度进行有效分类。在第一阶段,我们进行了二元分类,将SAH严重程度分为“良好结局”(0级),包括MRS级别0、1、2和3,以及“不良结局”(1级),包括级别4、5和6。使用随机森林算法进行特征选择,以确定用于SAH严重性预测的前20个特征。我们在每个阶段评估了13个机器学习模型,选择表现最好的分类器来优化结果。该数据集包括7个MRS严重级别的535个样本,并使用5倍交叉验证和不同的子组进行验证,以确保模型在不同场景下的稳健性能。在第一阶段,使用Extra Trees的二值分类达到了大约90%的准确率。在第二阶段,针对“好结果”组,随机森林模型达到了88%的准确率,而在第三阶段,它对“差结果”组达到了86%的准确率。通过提高不平衡类别的准确性并强调其实际应用的潜力,多阶段技术为预测SAH的严重程度提供了一个有希望的解决方案。未来的研究将集中在额外的调优,以提高模型在实际医疗环境中的功效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-class subarachnoid hemorrhage severity prediction: addressing challenges in predicting rare outcomes.

Accurately predicting the severity of subarachnoid hemorrhage (SAH) is critical for informing clinical decisions and improving patient outcomes. This study addresses the challenges of imbalanced data in SAH severity classification by employing the Modified Rankin Scale (MRS) within a three-stage classification framework. We utilize a three-stage approach to effectively categorize SAH severity. In the first stage, we performed binary classification, grouping SAH severity into "Good Outcome" (class 0), which includes MRS levels 0, 1, 2, and 3, and "Poor Outcome" (class 1), encompassing levels 4, 5, and 6. Feature selection was done using a Random Forest algorithm to identify the top 20 features for the SAH severity prediction. We evaluated thirteen machine learning models at each stage, selecting the top-performing classifiers to optimize results. The dataset comprised 535 samples across seven MRS severity levels and was validated using 5-fold cross-validation and diverse subgroups to ensure robust model performance across various scenarios. Binary classification in the first stage achieved approximately 90% accuracy with Extra Trees. In the second stage, targeting the "Good Outcome" group, the Random Forest model reached 88% accuracy, while in the third stage, it achieved 86% accuracy for the "Poor Outcome" group. By increasing accuracy across unbalanced classes and emphasizing its potential for practical use, the multi-stage technique presents a promising solution for predicting the severity of SAH. Future research will concentrate on additional tuning to improve the model's efficacy in actual healthcare environments.

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来源期刊
Neurosurgical Review
Neurosurgical Review 医学-临床神经学
CiteScore
5.60
自引率
7.10%
发文量
191
审稿时长
6-12 weeks
期刊介绍: The goal of Neurosurgical Review is to provide a forum for comprehensive reviews on current issues in neurosurgery. Each issue contains up to three reviews, reflecting all important aspects of one topic (a disease or a surgical approach). Comments by a panel of experts within the same issue complete the topic. By providing comprehensive coverage of one topic per issue, Neurosurgical Review combines the topicality of professional journals with the indepth treatment of a monograph. Original papers of high quality are also welcome.
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