Multi-Center 3D CNN for Parkinson's disease diagnosis and prognosis using clinical and T1-weighted MRI data.

IF 3.6 2区 医学 Q2 NEUROIMAGING
Silvia Basaia, Elisabetta Sarasso, Francesco Sciancalepore, Roberta Balestrino, Simona Musicco, Stefano Pisano, Iva Stankovic, Aleksandra Tomic, Rosita De Micco, Alessandro Tessitore, Massimo Salvi, Kristen M Meiburger, Vladimir S Kostic, Filippo Molinari, Federica Agosta, Massimo Filippi
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引用次数: 0

Abstract

Objective: Parkinson's disease (PD) presents challenges in early diagnosis and progression prediction. Recent advancements in machine learning, particularly convolutional-neural-networks (CNNs), show promise in enhancing diagnostic accuracy and prognostic capabilities using neuroimaging data. The aims of this study were: (i) develop a 3D-CNN based on MRI to distinguish controls and PD patients and (ii) employ CNN to predict the progression of PD.

Methods: Three cohorts were selected: 86 mild, 62 moderate-to-severe PD patients, and 60 controls; 14 mild-PD patients and 14 controls from Parkinson's Progression Markers Initiative database, and 38 de novo mild-PD patients and 38 controls. All participants underwent MRI scans and clinical evaluation at baseline and over 2-years. PD subjects were classified in two clusters of different progression using k-means clustering based on baseline and follow-up UDPRS-III scores. A 3D-CNN was built and tested on PD patients and controls, with binary classifications: controls vs moderate-to-severe PD, controls vs mild-PD, and two clusters of PD progression. The effect of transfer learning was also tested.

Results: CNN effectively differentiated moderate-to-severe PD from controls (74% accuracy) using MRI data alone. Transfer learning significantly improved performance in distinguishing mild-PD from controls (64% accuracy). For predicting disease progression, the model achieved over 70% accuracy by combining MRI and clinical data. Brain regions most influential in the CNN's decisions were visualized.

Conclusions: CNN, integrating multimodal data and transfer learning, provides encouraging results toward early-stage classification and progression monitoring in PD. Its explainability through activation maps offers potential for clinical application in early diagnosis and personalized monitoring.

多中心3D CNN用于帕金森病的临床和t1加权MRI数据诊断和预后。
目的:帕金森病(PD)的早期诊断和进展预测面临挑战。机器学习的最新进展,特别是卷积神经网络(cnn),显示出利用神经成像数据提高诊断准确性和预后能力的希望。本研究的目的是:(i)开发基于MRI的3D-CNN来区分对照组和PD患者;(ii)利用CNN来预测PD的进展。方法:选取3个队列:轻度PD患者86例,中重度PD患者62例,对照组60例;来自帕金森进展标志物倡议数据库的14名轻度pd患者和14名对照,以及38名新发轻度pd患者和38名对照。所有参与者在基线和2年内均进行了MRI扫描和临床评估。基于基线和随访UDPRS-III评分,采用k-均值聚类法将PD受试者分为两个不同进展的组。建立了一个3D-CNN,并对PD患者和对照组进行了测试,分为二分类:对照组与中度至重度PD,对照组与轻度PD,以及两组PD进展。对迁移学习的效果也进行了测试。结果:CNN仅使用MRI数据就能有效地将中度至重度PD与对照组区分开来(准确率为74%)。迁移学习显著提高了区分轻度pd与对照组的表现(准确率为64%)。在预测疾病进展方面,该模型通过结合MRI和临床数据,准确率达到70%以上。对CNN的决定影响最大的大脑区域被可视化。结论:CNN整合了多模态数据和迁移学习,为PD的早期分类和进展监测提供了令人鼓舞的结果。激活图的可解释性为早期诊断和个性化监测提供了潜在的临床应用。
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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来源期刊
Neuroimage-Clinical
Neuroimage-Clinical NEUROIMAGING-
CiteScore
7.50
自引率
4.80%
发文量
368
审稿时长
52 days
期刊介绍: NeuroImage: Clinical, a journal of diseases, disorders and syndromes involving the Nervous System, provides a vehicle for communicating important advances in the study of abnormal structure-function relationships of the human nervous system based on imaging. The focus of NeuroImage: Clinical is on defining changes to the brain associated with primary neurologic and psychiatric diseases and disorders of the nervous system as well as behavioral syndromes and developmental conditions. The main criterion for judging papers is the extent of scientific advancement in the understanding of the pathophysiologic mechanisms of diseases and disorders, in identification of functional models that link clinical signs and symptoms with brain function and in the creation of image based tools applicable to a broad range of clinical needs including diagnosis, monitoring and tracking of illness, predicting therapeutic response and development of new treatments. Papers dealing with structure and function in animal models will also be considered if they reveal mechanisms that can be readily translated to human conditions.
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