Tabarisaadi Pegah, Khosravi Abbas, Nahavandi Saeid
Institute for Intelligent Systems Research and Innovation (IISRI), Deakin University, Waurn Ponds, VIC, 3216, Australia.
Institute for Intelligent Systems Research and Innovation (IISRI), Deakin University, Waurn Ponds, VIC, 3216, Australia.
Comput Biol Med. 2022 May;144:105357. doi: 10.1016/j.compbiomed.2022.105357. Epub 2022 Mar 2.
Artificial intelligence (AI)-based medical diagnosis has received huge attention due to its potential to improve and accelerate the decision-making process at the patient level in a range of healthcare settings. Despite the recent signs of progress in this field, reliable quantification and proper communication of predictive uncertainties have been fully or partially overlooked in the existing literature on AI applications for medical diagnosis. This paper studies the automatic diagnosis of skin cancer using dermatologist spot images. Three different uncertainty-aware training algorithms (MC dropout, Bayesian Ensembling, and Spectral Normalized Neural Gaussian Process) are utilized to detect skin cancer. The performances of the three above-mentioned algorithms are compared from different perspectives. In addition, some images from the Cifar10 dataset are applied as the out-of-domain data and the performances of the algorithms are evaluated and compared for images that are far from the training samples. The accuracy, uncertainty accuracy, uncertainty accuracy for out-of-domain distribution samples, and the uncertainties of the predictions are reported in all cases and compared.
基于人工智能(AI)的医学诊断因其在一系列医疗环境中改善和加速患者层面决策过程的潜力而备受关注。尽管该领域最近有进展的迹象,但在现有的医学诊断AI应用文献中,预测不确定性的可靠量化和恰当传达已被全部或部分忽视。本文研究利用皮肤科医生的斑点图像对皮肤癌进行自动诊断。采用三种不同的不确定性感知训练算法(蒙特卡洛随机失活、贝叶斯集成和谱归一化神经高斯过程)来检测皮肤癌。从不同角度比较上述三种算法的性能。此外,将来自Cifar10数据集的一些图像用作域外数据,并针对远离训练样本的图像评估和比较算法的性能。在所有情况下都报告并比较了准确率、不确定性准确率、域外分布样本的不确定性准确率以及预测的不确定性。