Machine learning-based MRI radiomics to predict postoperative complications following peripheral nerve sheath tumour excision.

Jifeng Wang, Jia Hao Liu, Yinuo Sun, Peifeng Li, Kaiming Gao, Jian Wang
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Abstract

This study sought to establish and validate a machine learning-based multi-sequence MRI radiomics model for predicting postoperative complications in patients with peripheral nerve sheath tumours. We conducted a retrospective analysis of 303 patients with pathologically confirmed tumours, extracting features from T1-weighted and T2-weighted MRI scans. Relevant radiomic features were identified through interclass correlation coefficient analysis, t-tests and least absolute shrinkage and selection operator techniques. A multi-sequence radiomics model was developed using the Light Gradient Boosting Machine classifier, alongside a clinical-radiomics model that incorporated clinical features. The models exhibited robust diagnostic performance, with areas under the receiver operating characteristic curve reaching 0.95 in the training cohort. These findings underscore the model's potential to accurately predict postoperative complications, providing crucial support for clinicians in devising personalized treatment strategies for patients with peripheral nerve sheath tumours.Level of evidence: Prognostic III.

基于机器学习的MRI放射组学预测周围神经鞘肿瘤切除术后并发症。
本研究旨在建立并验证一种基于机器学习的多序列MRI放射组学模型,用于预测周围神经鞘肿瘤患者的术后并发症。我们对303例病理证实的肿瘤患者进行了回顾性分析,从t1加权和t2加权MRI扫描中提取特征。通过类间相关系数分析、t检验、最小绝对收缩和选择算子技术,确定了相关的放射学特征。使用光梯度增强机分类器开发了多序列放射组学模型,以及包含临床特征的临床放射组学模型。这些模型显示出稳健的诊断性能,在训练队列中,受试者工作特征曲线下的面积达到0.95。这些发现强调了该模型准确预测术后并发症的潜力,为临床医生为周围神经鞘肿瘤患者设计个性化治疗策略提供了重要支持。证据等级:预后III。
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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