IT-Infrastructure for Translational Medical Research, University of Augsburg, Germany.
Department of Neurosurgery, Río Hortega University Hospital, Spain.
Stud Health Technol Inform. 2024 Aug 30;317:356-365. doi: 10.3233/SHTI240878.
Glioblastoma (GB) is one of the most aggressive tumors of the brain. Despite intensive treatment, the average overall survival (OS) is 15-18 months. Therefore, it is helpful to be able to assess a patient's OS to tailor treatment more specifically to the course of the disease. Automated analysis of routinely generated MRI sequences (FLAIR, T1, T1CE, and T2) using deep learning-based image classification has the potential to enable accurate OS predictions.
In this work, a method was developed and evaluated that classifies the OS into three classes - "short", "medium" and "long". For this purpose, the four MRI sequences of a person were corrected using bias-field correction and merged into one image. The pipeline was realized by a bagging model using 5-fold cross-validation and the ResNet50 architecture.
The best model was able to achieve an F1-score of 0.51 and an accuracy of 0.67. In addition, this work enabled a largely clear differentiation of the "short" and "long" classes, which offers high clinical significance as decision support.
Automated analysis of MRI scans using deep learning-based image classification has the potential to enable accurate OS prediction in glioblastomas.
胶质母细胞瘤(GB)是大脑中最具侵袭性的肿瘤之一。尽管进行了强化治疗,平均总生存期(OS)仍为 15-18 个月。因此,能够评估患者的 OS,以便更具体地根据疾病进程调整治疗方案是有帮助的。使用基于深度学习的图像分类对常规生成的 MRI 序列(FLAIR、T1、T1CE 和 T2)进行自动分析,有可能实现准确的 OS 预测。
在这项工作中,开发并评估了一种将 OS 分为三类的方法 - “短”、“中”和“长”。为此,使用偏置场校正对一个人的四个 MRI 序列进行校正,并将它们合并为一个图像。该管道通过使用 5 倍交叉验证和 ResNet50 架构的袋装模型来实现。
最佳模型能够达到 0.51 的 F1 分数和 0.67 的准确性。此外,这项工作能够实现“短”和“长”类别的明显区分,这为决策支持提供了很高的临床意义。
使用基于深度学习的图像分类对 MRI 扫描进行自动分析有可能实现胶质母细胞瘤的准确 OS 预测。