应用3D CNN自动检测外伤性脑损伤颅内出血

IF 0.8 Q4 CLINICAL NEUROLOGY
Deepak Agrawal, Latha Poonamallee, Sharwari Joshi, Vaibhav Bahel
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引用次数: 0

摘要

目的:颅内出血(ICH)是外伤性脑损伤(TBI)的一种常见且可能致命的后果。及时识别脑出血对于确保及时干预和优化患者预后至关重要。然而,目前通过头部计算机断层扫描(CT)诊断脑出血的方法需要熟练的人员(放射科医生和/或神经外科医生),这些人员可能在所有中心都没有,特别是在农村地区。本研究的目的是开发一种神经创伤筛查工具,用于从脑外伤患者的头部CT扫描中识别脑出血。材料和方法:我们前瞻性地收集了新德里全印度医学科学研究所神经外科的头部CT扫描。本研究收集了该科室入组患者的约738个连续头部CT扫描,时间跨度为9个月,即2020年1月至2020年9月。与头部CT扫描一起收集的元数据包括人口统计和临床细节以及用作金标准的放射科医生报告。在数据集上训练了一个基于深度学习的三维卷积神经网络(CNN)模型。预处理、超参数和增强是训练3D CNN模型的常见方法,但训练模块的设置不同。该模型与保存最佳模型选项一起训练,并通过验证指标进行监视。在开始研究之前,已经获得了研究所伦理委员会的许可。结果:我们建立了一个3D CNN模型,用于从头部CT扫描中自动检测脑出血。筛选工具在20个病例中进行了测试,并对200个头部CT扫描进行了训练,其中99个是正常的头部CT, 101个是某些类型的脑出血的CT扫描。最终模型的灵敏度为90%,特异性为70%,准确性为80%。结论:我们的研究表明,自动筛查工具在从头部CT扫描中检测脑出血方面表现出值得称赞的准确性和敏感性。结果表明,3D CNN方法具有进一步探索tbi相关病理的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated intracranial hemorrhage detection in traumatic brain injury using 3D CNN
Objectives: Intracranial hemorrhage (ICH) is a prevalent and potentially fatal consequence of traumatic brain injury (TBI). Timely identification of ICH is crucial to ensure timely intervention and to optimize better patient outcomes. However, the current methods for diagnosing ICH from head computed tomography (CT) scans require skilled personnel (Radiologists and/or Neurosurgeons) who may be unavailable in all centers, especially in rural areas. The aim of this study is to develop a neurotrauma screening tool for identifying ICH from head CT scans of TBI patients. Materials and Methods: We prospectively collected head CT scans from the Department of Neurosurgery, All India Institute of Medical Sciences, New Delhi. Approximately 738 consecutive head CT scans from patients enrolled in the department were collected for this study spanning a duration of 9 months, that is, January 2020 to September 2020. The metadata collected along with the head CT scans consisted of demographic and clinical details and the radiologist’s report which was used as the gold standard. A deep learning-based 3D convolutional neural network (CNN) model was trained on the dataset. The pre-processing, hyperparameters, and augmentation were common for training the 3D CNN model whereas the training modules were set differently. The model was trained along with the save best model option and was monitored by validation metrics. The Institute Ethics Committee permission was taken before starting the study. Results: We developed a 3D CNN model for automatically detecting the ICH from head CT scans. The screening tool was tested in 20 cases and trained on 200 head CT scans, with 99 normal head CT and 101 CT scans with some type of ICH. The final model performed with 90% sensitivity, 70% specificity, and 80% accuracy. Conclusion: Our study reveals that the automated screening tool exhibits a commendable level of accuracy and sensitivity in detecting ICH from the head CT scans. The results indicate that the 3D CNN approach has a potential for further exploring the TBI-related pathologies.
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CiteScore
2.10
自引率
0.00%
发文量
129
审稿时长
22 weeks
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