RoMIA: a framework for creating Robust Medical Imaging AI models for chest radiographs.

Frontiers in radiology Pub Date : 2024-01-08 eCollection Date: 2023-01-01 DOI:10.3389/fradi.2023.1274273
Aditi Anand, Sarada Krithivasan, Kaushik Roy
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Abstract

Artificial Intelligence (AI) methods, particularly Deep Neural Networks (DNNs), have shown great promise in a range of medical imaging tasks. However, the susceptibility of DNNs to producing erroneous outputs under the presence of input noise and variations is of great concern and one of the largest challenges to their adoption in medical settings. Towards addressing this challenge, we explore the robustness of DNNs trained for chest radiograph classification under a range of perturbations reflective of clinical settings. We propose RoMIA, a framework for the creation of Robust Medical Imaging AI models. RoMIA adds three key steps to the model training and deployment flow: (i) Noise-added training, wherein a part of the training data is synthetically transformed to represent common noise sources, (ii) Fine-tuning with input mixing, in which the model is refined with inputs formed by mixing data from the original training set with a small number of images from a different source, and (iii) DCT-based denoising, which removes a fraction of high-frequency components of each image before applying the model to classify it. We applied RoMIA to create six different robust models for classifying chest radiographs using the CheXpert dataset. We evaluated the models on the CheXphoto dataset, which consists of naturally and synthetically perturbed images intended to evaluate robustness. Models produced by RoMIA show 3%-5% improvement in robust accuracy, which corresponds to an average reduction of 22.6% in misclassifications. These results suggest that RoMIA can be a useful step towards enabling the adoption of AI models in medical imaging applications.

RoMIA:为胸片创建鲁棒医学成像人工智能模型的框架。
人工智能(AI)方法,尤其是深度神经网络(DNN),在一系列医学成像任务中显示出巨大的前景。然而,DNNs 在输入噪声和变化的情况下容易产生错误输出,这一点非常令人担忧,也是其在医疗环境中应用所面临的最大挑战之一。为了应对这一挑战,我们探索了在一系列反映临床环境的扰动下为胸片分类而训练的 DNN 的鲁棒性。我们提出了用于创建鲁棒医学影像人工智能模型的框架 RoMIA。RoMIA 在模型训练和部署流程中增加了三个关键步骤:(i) 添加噪声训练,即对部分训练数据进行合成转换,以代表常见的噪声源;(ii) 输入混合微调,即通过将原始训练集的数据与来自不同来源的少量图像混合形成的输入来完善模型;(iii) 基于 DCT 的去噪,即在应用模型进行分类之前去除每张图像的部分高频成分。我们应用 RoMIA 创建了六种不同的稳健模型,用于使用 CheXpert 数据集对胸部 X 光片进行分类。我们在 CheXphoto 数据集上对模型进行了评估,该数据集由自然和合成扰动图像组成,旨在评估鲁棒性。由 RoMIA 生成的模型在鲁棒性准确性方面提高了 3%-5%,相当于平均减少了 22.6% 的错误分类。这些结果表明,RoMIA 可以成为医疗成像应用中采用人工智能模型的有用步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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