Meltem Kurt Pehlivanoğlu, Nur Banu Albayrak, Deniz Karhan, İhsan Doğan
{"title":"迈向稳健的大脑中线移位检测:基于yolo的三维切片器扩展与一个新的数据集。","authors":"Meltem Kurt Pehlivanoğlu, Nur Banu Albayrak, Deniz Karhan, İhsan Doğan","doi":"10.1007/s12021-025-09748-z","DOIUrl":null,"url":null,"abstract":"<p><p>Accurate detection of brain midline shift is critical for the diagnosis and monitoring of neurological conditions such as traumatic brain injuries, strokes, and tumors. This study aims to address the lack of dedicated datasets and tools for this task by introducing a novel dataset and a 3D Slicer extension, evaluating the effectiveness of multiple deep learning models for automatic detection of brain midline shift. We introduce the brain-midline-detection dataset, specifically designed for identifying three brain landmarks-Anterior Falx (AF), Posterior Falx (PF), and Septum Pellucidum (SP)-in MRI scans. A comprehensive performance evaluation was conducted using deep learning models including YOLOv5 (n, s, m, l), YOLOv8, and YOLOv9 (GELAN-C model). The best-performing model was integrated into the 3D Slicer platform as a custom extension, incorporating steps such as MRI preprocessing, filtering, skull stripping, registration, and midline shift computation. Among the evaluated models, YOLOv5l achieved the highest precision (0.9601) and recall (0.9489), while YOLOv5m delivered the best mAP@0.5:0.95 score (0.6087). YOLOv5n and YOLOv5s exhibited the lowest loss values, indicating high efficiency. Although YOLOv8s achieved a higher mAP@0.5:0.95 score (0.6382), its high loss values reduced its practical effectiveness. YOLOv9-GELAN-C performed the worst, with the highest losses and lowest overall accuracy. YOLOv5m was selected as the optimal model due to its balanced performance and was successfully integrated into 3D Slicer as an extension for automated midline shift detection. 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引用次数: 0
摘要
脑中线移位的准确检测对于创伤性脑损伤、中风和肿瘤等神经系统疾病的诊断和监测至关重要。本研究旨在通过引入新的数据集和3D切片器扩展来解决该任务缺乏专用数据集和工具的问题,评估多种深度学习模型用于自动检测大脑中线移位的有效性。我们介绍了脑中线检测数据集,专门用于识别MRI扫描中的三个脑标志-前镰(AF),后镰(PF)和透明隔(SP)。采用深度学习模型YOLOv5 (n, s, m, l)、YOLOv8和YOLOv9 (GELAN-C模型)进行综合性能评价。表现最好的模型作为自定义扩展集成到3D切片器平台中,包括MRI预处理,滤波,颅骨剥离,配准和中线移位计算等步骤。在评价的模型中,YOLOv5l的准确率最高(0.9601),召回率最高(0.9489),而YOLOv5m的得分最高mAP@0.5:0.95分(0.6087)。YOLOv5n和YOLOv5s的损耗值最低,效率高。虽然YOLOv8s获得了更高的mAP@0.5:0.95分数(0.6382),但其高损耗值降低了其实际有效性。YOLOv9-GELAN-C表现最差,损失最大,整体准确率最低。YOLOv5m因其平衡的性能而被选为最佳模型,并成功集成到3D切片机中,作为自动中线移位检测的扩展。通过提供一个新的注释数据集、一个经过验证的检测管道和开源工具,本研究有助于更准确、高效和可访问的人工智能辅助脑中线评估医学成像。
Towards Robust Brain Midline Shift Detection: A YOLO-Based 3D Slicer Extension with a Novel Dataset.
Accurate detection of brain midline shift is critical for the diagnosis and monitoring of neurological conditions such as traumatic brain injuries, strokes, and tumors. This study aims to address the lack of dedicated datasets and tools for this task by introducing a novel dataset and a 3D Slicer extension, evaluating the effectiveness of multiple deep learning models for automatic detection of brain midline shift. We introduce the brain-midline-detection dataset, specifically designed for identifying three brain landmarks-Anterior Falx (AF), Posterior Falx (PF), and Septum Pellucidum (SP)-in MRI scans. A comprehensive performance evaluation was conducted using deep learning models including YOLOv5 (n, s, m, l), YOLOv8, and YOLOv9 (GELAN-C model). The best-performing model was integrated into the 3D Slicer platform as a custom extension, incorporating steps such as MRI preprocessing, filtering, skull stripping, registration, and midline shift computation. Among the evaluated models, YOLOv5l achieved the highest precision (0.9601) and recall (0.9489), while YOLOv5m delivered the best mAP@0.5:0.95 score (0.6087). YOLOv5n and YOLOv5s exhibited the lowest loss values, indicating high efficiency. Although YOLOv8s achieved a higher mAP@0.5:0.95 score (0.6382), its high loss values reduced its practical effectiveness. YOLOv9-GELAN-C performed the worst, with the highest losses and lowest overall accuracy. YOLOv5m was selected as the optimal model due to its balanced performance and was successfully integrated into 3D Slicer as an extension for automated midline shift detection. By offering a new annotated dataset, a validated detection pipeline, and open-source tools, this study contributes to more accurate, efficient, and accessible AI-assisted medical imaging for brain midline assessment.
期刊介绍:
Neuroinformatics publishes original articles and reviews with an emphasis on data structure and software tools related to analysis, modeling, integration, and sharing in all areas of neuroscience research. The editors particularly invite contributions on: (1) Theory and methodology, including discussions on ontologies, modeling approaches, database design, and meta-analyses; (2) Descriptions of developed databases and software tools, and of the methods for their distribution; (3) Relevant experimental results, such as reports accompanie by the release of massive data sets; (4) Computational simulations of models integrating and organizing complex data; and (5) Neuroengineering approaches, including hardware, robotics, and information theory studies.