Chharia Aviral, Upadhyay Rahul, Kumar Vinay, Cheng Chao, Zhang Jing, Wang Tianyang, Xu Min
Mechanical Engineering Department, Thapar Institute of Engineering and Technology, Patiala, Punjab 147004, India.
Electronics and Communication Engineering Department, Thapar Institute of Engineering and Technology, Patiala, Punjab 147004, India.
IEEE Access. 2022;10:23167-23185. doi: 10.1109/access.2022.3153059. Epub 2022 Feb 21.
Deep learning-based Computer-Aided Diagnosis has gained immense attention in recent years due to its capability to enhance diagnostic performance and elucidate complex clinical tasks. However, conventional supervised deep learning models are incapable of recognizing novel diseases that do not exist in the training dataset. Automated early-stage detection of novel infectious diseases can be vital in controlling their rapid spread. Moreover, the development of a conventional CAD model is only possible after disease outbreaks and datasets become available for training (viz. COVID-19 outbreak). Since novel diseases are unknown and cannot be included in training data, it is challenging to recognize them through existing supervised deep learning models. Even after data becomes available, recognizing new classes with conventional models requires a complete extensive re-training. The present study is the to report this problem and propose a novel solution to it. In this study, we propose a new class of CAD models, i.e., Deep-Precognitive Diagnosis, wherein artificial agents are enabled to identify unknown diseases that have the potential to cause a pandemic in the future. A biologically-inspired Conv-Fuzzy network is developed. Experimental results show that the model trained to classify Chest X-Ray (CXR) scans into normal and bacterial pneumonia detected a novel disease during testing, unseen by it in the training sample and confirmed to be COVID-19 later. The model is also tested on SARS-CoV-1 and MERS-CoV samples as unseen diseases and achieved state-of-the-art accuracy. The proposed model eliminates the need for model re-training by creating a new class in real-time for the detected novel disease, thus classifying it on all subsequent occurrences. the model addresses the challenge of limited labeled data availability, which renders most supervised learning techniques ineffective and establishes that modified fuzzy classifiers can achieve high accuracy on image classification tasks.
近年来,基于深度学习的计算机辅助诊断因其能够提高诊断性能并阐明复杂的临床任务而备受关注。然而,传统的监督深度学习模型无法识别训练数据集中不存在的新型疾病。新型传染病的自动早期检测对于控制其快速传播至关重要。此外,传统CAD模型只有在疾病爆发且有数据集可用于训练后(如COVID-19爆发)才能开发。由于新型疾病未知且无法包含在训练数据中,通过现有的监督深度学习模型识别它们具有挑战性。即使数据可用,使用传统模型识别新类别也需要进行全面广泛的重新训练。本研究首次报告了这个问题并提出了一种新颖的解决方案。在本研究中,我们提出了一种新型的CAD模型,即深度预认知诊断,其中人工智能体能够识别未来有可能引发大流行的未知疾病。我们开发了一种受生物启发的卷积模糊网络。实验结果表明,经过训练将胸部X光(CXR)扫描分类为正常和细菌性肺炎的模型在测试期间检测到一种新型疾病,该疾病在训练样本中未见过,后来被确认为COVID-19。该模型还在SARS-CoV-1和MERS-CoV样本上作为未知疾病进行了测试,并取得了领先的准确率。所提出的模型通过为检测到的新型疾病实时创建一个新类别,消除了模型重新训练的需要,从而对所有后续出现的该疾病进行分类。此外,该模型解决了标记数据可用性有限的挑战,这使得大多数监督学习技术无效,并证明了改进的模糊分类器在图像分类任务中可以实现高精度。