End-to-end deep learning patient level classification of affected territory of ischemic stroke patients in DW-MRI.

IF 2.4 3区 医学 Q2 CLINICAL NEUROLOGY Neuroradiology Pub Date : 2025-01-01 Epub Date: 2024-12-10 DOI:10.1007/s00234-024-03520-x
Ilker Ozgur Koska, Alper Selver, Fazıl Gelal, Muhsın Engın Uluc, Yusuf Kenan Çetinoğlu, Nursel Yurttutan, Mehmet Serındere, Oğuz Dicle
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Abstract

Purpose: To develop an end-to-end DL model for automated classification of affected territory in DWI of stroke patients.

Materials and methods: In this retrospective multicenter study, brain DWI studies from January 2017 to April 2020 from Center 1, from June 2020 to December 2020 from Center 2, and from November 2019 to April 2020 from Center 3 were included. Four radiologists labeled images into five classes: anterior cerebral artery (ACA), middle cerebral artery (MCA), posterior circulation (PC), and watershed (WS) regions, as well as normal images. Additionally, for Center 1, clinical information was encoded as a domain knowledge vector to incorporate into image embeddings. 3D convolutional neural network (CNN) and attention gate integrated versions for direct 3D encoding, long short-term memory (LSTM-CNN), and time-distributed layer for slice-based encoding were employed. Balanced classification accuracy, macro averaged f1 score, AUC, and interrater Cohen's kappa were calculated.

Results: Overall, 624 DWI MRIs from 3 centers were utilized (mean age, interval: 66.89 years, 29-95 years; 345 male) with 439 patients in the training, 103 in the validation, and 82 in the test sets. The best model was a slice-based parallel encoding model with 0.88 balanced accuracy, 0.80 macro-f1 score, and an AUC of 0.98. Clinical domain knowledge integration improved the performance with 0.93 best overall accuracy with parallel stream model embeddings and support vector machine classifiers. The mean kappa value for interrater agreement was 0.87.

Conclusion: Developed end-to-end deep learning models performed well in classifying affected regions from stroke in DWI.

Clinical relevance statement: The end-to-end deep learning model with a parallel stream encoding strategy for classifying stroke regions in DWI has performed comparably with radiologists.

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DW-MRI对缺血性脑卒中患者患处的端到端深度学习分级。
目的:建立脑卒中患者DWI受累区域自动分类的端到端DL模型。材料和方法:在这项回顾性多中心研究中,纳入了2017年1月至2020年4月中心1、2020年6月至2020年12月中心2和2019年11月至2020年4月中心3的脑DWI研究。4名放射科医生将图像分为5类:大脑前动脉(ACA)、大脑中动脉(MCA)、后循环(PC)和分水岭(WS)区域,以及正常图像。此外,对于中心1,临床信息被编码为领域知识向量,以合并到图像嵌入中。三维卷积神经网络(CNN)和注意门集成版本用于直接三维编码,长短期记忆(LSTM-CNN)和时间分布层用于基于切片的编码。计算平衡分类精度、宏观平均f1评分、AUC和解释器Cohen’s kappa。结果:总共使用了来自3个中心的624张DWI mri(平均年龄,间隔:66.89岁,29-95岁;345名男性),其中439名患者在训练组,103名患者在验证组,82名患者在测试组。最佳模型是基于切片的并行编码模型,其平衡精度为0.88,宏观f1得分为0.80,AUC为0.98。临床领域知识集成采用并行流模型嵌入和支持向量机分类器,整体准确率达到0.93。译员间一致性的平均kappa值为0.87。结论:开发的端到端深度学习模型在DWI脑卒中的影响区域分类中表现良好。临床相关性声明:端到端深度学习模型采用并行流编码策略对DWI脑卒中区域进行分类,其表现与放射科医生相当。
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来源期刊
Neuroradiology
Neuroradiology 医学-核医学
CiteScore
5.30
自引率
3.60%
发文量
214
审稿时长
4-8 weeks
期刊介绍: Neuroradiology aims to provide state-of-the-art medical and scientific information in the fields of Neuroradiology, Neurosciences, Neurology, Psychiatry, Neurosurgery, and related medical specialities. Neuroradiology as the official Journal of the European Society of Neuroradiology receives submissions from all parts of the world and publishes peer-reviewed original research, comprehensive reviews, educational papers, opinion papers, and short reports on exceptional clinical observations and new technical developments in the field of Neuroimaging and Neurointervention. The journal has subsections for Diagnostic and Interventional Neuroradiology, Advanced Neuroimaging, Paediatric Neuroradiology, Head-Neck-ENT Radiology, Spine Neuroradiology, and for submissions from Japan. Neuroradiology aims to provide new knowledge about and insights into the function and pathology of the human nervous system that may help to better diagnose and treat nervous system diseases. Neuroradiology is a member of the Committee on Publication Ethics (COPE) and follows the COPE core practices. Neuroradiology prefers articles that are free of bias, self-critical regarding limitations, transparent and clear in describing study participants, methods, and statistics, and short in presenting results. Before peer-review all submissions are automatically checked by iThenticate to assess for potential overlap in prior publication.
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