Biomedical Image Technologies, ETSI Telecomunicación, Universidad Politécnica de Madrid, Av Complutense 30, 28040, Madrid, Spain.
CIBER-BBN, Madrid, Spain.
Sci Rep. 2022 Jun 7;12(1):9387. doi: 10.1038/s41598-022-13298-8.
The main objective of this work is to develop and evaluate an artificial intelligence system based on deep learning capable of automatically identifying, quantifying, and characterizing COVID-19 pneumonia patterns in order to assess disease severity and predict clinical outcomes, and to compare the prediction performance with respect to human reader severity assessment and whole lung radiomics. We propose a deep learning based scheme to automatically segment the different lesion subtypes in nonenhanced CT scans. The automatic lesion quantification was used to predict clinical outcomes. The proposed technique has been independently tested in a multicentric cohort of 103 patients, retrospectively collected between March and July of 2020. Segmentation of lesion subtypes was evaluated using both overlapping (Dice) and distance-based (Hausdorff and average surface) metrics, while the proposed system to predict clinically relevant outcomes was assessed using the area under the curve (AUC). Additionally, other metrics including sensitivity, specificity, positive predictive value and negative predictive value were estimated. 95% confidence intervals were properly calculated. The agreement between the automatic estimate of parenchymal damage (%) and the radiologists' severity scoring was strong, with a Spearman correlation coefficient (R) of 0.83. The automatic quantification of lesion subtypes was able to predict patient mortality, admission to the Intensive Care Units (ICU) and need for mechanical ventilation with an AUC of 0.87, 0.73 and 0.68 respectively. The proposed artificial intelligence system enabled a better prediction of those clinically relevant outcomes when compared to the radiologists' interpretation and to whole lung radiomics. In conclusion, deep learning lesion subtyping in COVID-19 pneumonia from noncontrast chest CT enables quantitative assessment of disease severity and better prediction of clinical outcomes with respect to whole lung radiomics or radiologists' severity score.
这项工作的主要目的是开发和评估一种基于深度学习的人工智能系统,该系统能够自动识别、量化和描述 COVID-19 肺炎的模式,以便评估疾病的严重程度并预测临床结果,并将预测性能与人类读者的严重程度评估和全肺放射组学进行比较。我们提出了一种基于深度学习的方案,用于自动分割非增强 CT 扫描中的不同病变亚型。自动病变量化用于预测临床结果。该技术已在 2020 年 3 月至 7 月间回顾性收集的 103 例患者的多中心队列中进行了独立测试。使用重叠(Dice)和基于距离(Hausdorff 和平均表面)的度量来评估病变亚型的分割,而用于预测临床相关结果的建议系统则使用曲线下面积(AUC)进行评估。此外,还估计了其他指标,包括敏感性、特异性、阳性预测值和阴性预测值。适当计算了 95%置信区间。自动估计的实质损伤(%)与放射科医生严重程度评分之间的一致性很强,Spearman 相关系数(R)为 0.83。病变亚型的自动量化能够预测患者死亡率、入住重症监护病房(ICU)和需要机械通气的可能性,AUC 分别为 0.87、0.73 和 0.68。与放射科医生的解释和全肺放射组学相比,该人工智能系统能够更好地预测这些临床相关结果。总之,非对比性胸部 CT 上的 COVID-19 肺炎深度学习病变亚型分析可实现疾病严重程度的定量评估,并在全肺放射组学或放射科医生严重程度评分方面更好地预测临床结果。