Department of Computational Medicine and Bioinformatics, University of Michigan, Ann Arbor, MI, United States.
Department of Internal Medicine, University of Michigan, Ann Arbor, MI, United States.
Comput Biol Med. 2021 Jul;134:104463. doi: 10.1016/j.compbiomed.2021.104463. Epub 2021 May 11.
Acute respiratory distress syndrome (ARDS) is a life-threatening lung injury with global prevalence and high mortality. Chest x-rays (CXR) are critical in the early diagnosis and treatment of ARDS. However, imaging findings may not result in proper identification of ARDS due to a number of reasons, including nonspecific appearance of radiological features, ambiguity in a patient's case due to the pathological stage of the disease, and poor inter-rater reliability from interpretations of CXRs by multiple clinical experts. This study demonstrates the potential capability of methodologies in artificial intelligence, machine learning, and image processing to overcome these challenges and quantitatively assess CXRs for presence of ARDS. We propose and describe Directionality Measure, a novel feature engineering technique used to capture the "cloud-like" appearance of diffuse alveolar damage as a mathematical concept. This study also examines the effectiveness of using an off-the-shelf, pretrained deep learning model as a feature extractor in addition to standard features extracted from the histogram and gray-level co-occurrence matrix (GLCM). Data was collected from hospitalized patients at Michigan Medicine's intensive care unit and the cohort's inclusion criteria was specifically designed to be representative of patients at risk of developing ARDS. Multiple machine learning models were used to evaluate these features with 5-fold cross-validation and the final performance was reported on a hold-out, temporally distinct test set. With AdaBoost, Directionality Measure achieved an accuracy of 78% and AUC of 74% - outperforming classification results using features from the histogram (75% accuracy and 73% AUC), GLCM (76% accuracy and 73% AUC), and ResNet-50 (77% accuracy and 73% AUC). Further experimental results demonstrated that using all feature sets in combination achieved the best overall performance, yielding an accuracy of 83% and AUC of 79% with AdaBoost. These results demonstrate the potential capability of using the proposed methodologies to complement current clinical analysis for detection of ARDS from CXRs.
急性呼吸窘迫综合征(ARDS)是一种具有全球普遍性和高死亡率的危及生命的肺部损伤。胸部 X 光(CXR)在 ARDS 的早期诊断和治疗中至关重要。然而,由于多种原因,包括影像学特征的非特异性表现、由于疾病的病理阶段导致患者情况的模糊性以及多位临床专家对 CXR 解释的观察者间可靠性差,影像学结果可能无法正确识别 ARDS。本研究展示了人工智能、机器学习和图像处理方法在克服这些挑战和定量评估 CXR 中 ARDS 存在方面的潜在能力。我们提出并描述了方向性度量,这是一种新颖的特征工程技术,用于捕获弥漫性肺泡损伤的“云状”外观,作为一个数学概念。本研究还研究了使用现成的、预训练的深度学习模型作为特征提取器的有效性,除了从直方图和灰度共生矩阵(GLCM)中提取的标准特征之外。数据是从密歇根大学医学中心的重症监护病房住院患者中收集的,该队列的纳入标准是专门设计为代表有发生 ARDS 风险的患者。使用 5 倍交叉验证评估了多个机器学习模型的这些特征,最终的性能在独立的测试集上进行报告。使用 AdaBoost,方向性度量的准确率达到 78%,AUC 达到 74%-优于使用直方图特征(准确率 75%,AUC 73%)、GLCM 特征(准确率 76%,AUC 73%)和 ResNet-50 特征(准确率 77%,AUC 73%)的分类结果。进一步的实验结果表明,使用所有特征集的组合可实现最佳的整体性能,使用 AdaBoost 可获得 83%的准确率和 79%的 AUC。这些结果表明,使用所提出的方法来补充当前的临床分析以从 CXR 中检测 ARDS 具有潜在能力。