神经胶质瘤亚型分型与预后预测的多重免疫组织化学与机器学习结合

IF 10.7 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
MedComm Pub Date : 2025-04-22 DOI:10.1002/mco2.70138
Houshi Xu, Zhen Fan, Shan Jiang, Maoyuan Sun, Huihui Chai, Ruize Zhu, Xiaoyu Liu, Yue Wang, Jiawen Chen, Junji Wei, Ying Mao, Zhifeng Shi
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引用次数: 0

摘要

胶质瘤亚型对治疗决策至关重要,但传统方法往往无法捕获肿瘤异质性。本研究提出了一种结合多重免疫组织化学(mIHC)和机器学习的神经胶质瘤亚型分型和预后预测的新框架。来自华山医院队列的185例患者样本使用多标签mIHC面板进行染色,并使用基于人工智能的自动扫描系统进行分析,计算细胞比率并确定各种标记物的阳性肿瘤细胞比例。将患者分为两组(训练组:N = 111,测试组:N = 74),然后开发并验证机器学习模型用于亚型分类和预后预测。该框架确定了两种不同的胶质瘤亚型,它们在预后、临床特征和分子谱方面存在显著差异。高风险亚型与年龄较大、预后较差、星形细胞瘤/胶质母细胞瘤、肿瘤分级较高、间质评分升高和免疫微环境抑制相关,表现为IDH野生型、1p19q非编码缺失和MGMT启动子非甲基化,提示化疗耐药。相反,低风险亚型的特点是年龄较小,预后较好,星形细胞瘤/少突胶质细胞瘤,肿瘤分级较低,以及有利的分子谱(IDH突变,1p19q编码,MGMT启动子甲基化),表明化疗敏感性。基于mihc的框架能够实现快速胶质瘤分类,促进量身定制的治疗策略和准确的预后预测,潜在地改善患者管理和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integrating Multiplex Immunohistochemistry and Machine Learning for Glioma Subtyping and Prognosis Prediction

Integrating Multiplex Immunohistochemistry and Machine Learning for Glioma Subtyping and Prognosis Prediction

Glioma subtyping is crucial for treatment decisions, but traditional approaches often fail to capture tumor heterogeneity. This study proposes a novel framework integrating multiplex immunohistochemistry (mIHC) and machine learning for glioma subtyping and prognosis prediction. 185 patient samples from the Huashan hospital cohort were stained using a multi-label mIHC panel and analyzed with an AI-based auto-scanning system to calculate cell ratios and determine the proportion of positive tumor cells for various markers. Patients were divided into two cohorts (training: N = 111, testing: N = 74), and a machine learning model was then developed and validated for subtype classification and prognosis prediction. The framework identified two distinct glioma subtypes with significant differences in prognosis, clinical characteristics, and molecular profiles. The high-risk subtype, associated with older age, poorer outcomes, astrocytoma/glioblastoma, higher tumor grades, elevated mesenchymal scores, and an inhibitory immune microenvironment, exhibited IDH wild-type, 1p19q non-codeletion, and MGMT promoter unmethylation, suggesting chemotherapy resistance. Conversely, the low-risk subtype, characterized by younger age, better prognosis, astrocytoma/oligodendroglioma, lower tumor grades, and favorable molecular profiles (IDH mutation, 1p19q codeletion, MGMT promoter methylation), indicated chemotherapy sensitivity. The mIHC-based framework enables rapid glioma classification, facilitating tailored treatment strategies and accurate prognosis prediction, potentially improving patient management and outcomes.

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CiteScore
6.70
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