Department of Neurosurgery, The First Affiliated Hospital of USTC, Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei, Anhui Province, PR China; Anhui Province Key Laboratory of Brain Function and Brain Disease, Hefei, Anhui Province, PR China.
Department of Neurology, The First Affiliated Hospital of Anhui Medical University, Hefei, Anhui Province, PR China.
Neurotherapeutics. 2024 Oct;21(6):e00471. doi: 10.1016/j.neurot.2024.e00471. Epub 2024 Oct 16.
Parkinson's Disease (PD) is a progressive neurodegenerative disorder with substantial impact on patients' quality of life. Subthalamic nucleus deep brain stimulation (STN-DBS) is an effective treatment for advanced PD, but patient responses vary, necessitating predictive models for personalized care. Recent advancements in medical imaging and machine learning offer opportunities to enhance predictive accuracy, particularly through deep learning and multi-instance learning (MIL) techniques. This retrospective study included 127 PD patients undergoing STN-DBS. Medical records and imaging data were collected, and patients were categorized based on treatment outcomes. Advanced segmentation models were trained for automated region of interest (ROI) delineation. A novel 2.5D deep learning approach incorporating multi-slice representation was developed to extract detailed ROI features. Multi-instance learning fusion techniques integrated predictions across multiple slices, combining radiomics and deep learning features to enhance model performance. Various machine learning algorithms were evaluated, and model robustness was assessed using cross-validation and hyperparameter optimization. The MIL model achieved an area under the curve (AUC) of 0.846 for predicting STN-DBS outcomes, surpassing the radiomics model's AUC of 0.825. Integration of MIL and radiomics features in the DLRad model further improved discriminative ability to an AUC of 0.871. Calibration tests showed good model reliability, and decision curve analysis demonstrated clinical utility, affirming the model's predictive advantage. This study demonstrates the efficacy of integrating MIL, radiomics, and deep learning techniques to predict STN-DBS outcomes in PD patients. The multimodal fusion approach enhances predictive accuracy, supporting personalized treatment planning and advancing patient care.
帕金森病(PD)是一种进行性神经退行性疾病,对患者的生活质量有重大影响。丘脑底核深部脑刺激(STN-DBS)是治疗晚期 PD 的有效方法,但患者的反应各不相同,需要预测模型来进行个性化治疗。医学成像和机器学习的最新进展为提高预测准确性提供了机会,特别是通过深度学习和多实例学习(MIL)技术。这项回顾性研究纳入了 127 名接受 STN-DBS 的 PD 患者。收集了病历和影像学数据,并根据治疗结果对患者进行分类。训练了高级分割模型以实现自动感兴趣区(ROI)勾画。开发了一种新的 2.5D 深度学习方法,结合多切片表示来提取详细的 ROI 特征。多实例学习融合技术整合了多个切片的预测结果,结合放射组学和深度学习特征以提高模型性能。评估了各种机器学习算法,并使用交叉验证和超参数优化评估了模型的稳健性。MIL 模型预测 STN-DBS 结果的曲线下面积(AUC)为 0.846,优于放射组学模型的 AUC(0.825)。在 DLRad 模型中整合 MIL 和放射组学特征进一步提高了判别能力,达到 AUC 为 0.871。校准测试表明模型具有良好的可靠性,决策曲线分析证明了模型的临床实用性,证实了模型的预测优势。这项研究表明,整合 MIL、放射组学和深度学习技术预测 PD 患者 STN-DBS 结果是有效的。多模态融合方法提高了预测准确性,支持个性化治疗计划,改善了患者护理。