Medical Imaging and Diagnostics Lab, NCAI COMSATS University Islamabad, Islamabad, Pakistan.
iVision Lab, Department of Electrical Engineering, Institute of Space Technology, Islamabad, Pakistan.
J Imaging Inform Med. 2024 Oct;37(5):2149-2172. doi: 10.1007/s10278-024-01009-w. Epub 2024 Apr 2.
Brain tumors are a threat to life for every other human being, be it adults or children. Gliomas are one of the deadliest brain tumors with an extremely difficult diagnosis. The reason is their complex and heterogenous structure which gives rise to subjective as well as objective errors. Their manual segmentation is a laborious task due to their complex structure and irregular appearance. To cater to all these issues, a lot of research has been done and is going on to develop AI-based solutions that can help doctors and radiologists in the effective diagnosis of gliomas with the least subjective and objective errors, but an end-to-end system is still missing. An all-in-one framework has been proposed in this research. The developed end-to-end multi-task learning (MTL) architecture with a feature attention module can classify, segment, and predict the overall survival of gliomas by leveraging task relationships between similar tasks. Uncertainty estimation has also been incorporated into the framework to enhance the confidence level of healthcare practitioners. Extensive experimentation was performed by using combinations of MRI sequences. Brain tumor segmentation (BraTS) challenge datasets of 2019 and 2020 were used for experimental purposes. Results of the best model with four sequences show 95.1% accuracy for classification, 86.3% dice score for segmentation, and a mean absolute error (MAE) of 456.59 for survival prediction on the test data. It is evident from the results that deep learning-based MTL models have the potential to automate the whole brain tumor analysis process and give efficient results with least inference time without human intervention. Uncertainty quantification confirms the idea that more data can improve the generalization ability and in turn can produce more accurate results with less uncertainty. The proposed model has the potential to be utilized in a clinical setup for the initial screening of glioma patients.
脑肿瘤是人类的生命威胁,无论是成年人还是儿童。神经胶质瘤是最致命的脑肿瘤之一,诊断极其困难。原因是其复杂且异质的结构导致了主观和客观的错误。由于其复杂的结构和不规则的外观,手动分割是一项费力的任务。为了解决所有这些问题,已经进行了大量的研究,并正在开发基于人工智能的解决方案,以帮助医生和放射科医生以最小的主观和客观错误有效地诊断神经胶质瘤,但仍然缺少端到端系统。本研究提出了一个整体框架。所开发的具有特征注意模块的端到端多任务学习 (MTL) 架构可以通过利用相似任务之间的任务关系对神经胶质瘤进行分类、分割和预测整体生存情况。不确定性估计也已纳入框架,以提高医疗保健从业者的置信水平。通过使用 MRI 序列的组合进行了广泛的实验。使用 2019 年和 2020 年的脑肿瘤分割 (BraTS) 挑战赛数据集进行实验。使用四个序列的最佳模型的结果表明,分类的准确率为 95.1%,分割的 Dice 得分为 86.3%,生存预测的平均绝对误差 (MAE) 为 456.59。从结果可以明显看出,基于深度学习的 MTL 模型具有自动化整个脑肿瘤分析过程的潜力,并以最少的推断时间提供高效的结果,而无需人工干预。不确定性量化证实了更多数据可以提高泛化能力的想法,从而可以产生更准确、不确定性更小的结果。所提出的模型有可能在临床环境中用于神经胶质瘤患者的初步筛选。