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Evaluation of an AI-Powered Lung Nodule Algorithm for Detection and 3D Segmentation of Primary Lung Tumors

机译:评价原发性肺肿瘤检测和3D分割的AI动力肺结节算法

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摘要

Automated detection and segmentation is a prerequisite for the deployment of image-based secondary analyses, especially for lung tumors. However, currently only applications for lung nodules ≤3 cm exist. Therefore, we tested the performance of a fully automated AI-based lung nodule algorithm for detection and 3D segmentation of primary lung tumors in the context of tumor staging using the CT component of FDG-PET/CT and including all T-categories (T1–T4). FDG-PET/CTs of 320 patients with histologically confirmed lung cancer performed between 01/2010 and 06/2016 were selected. First, the main primary lung tumor within each scan was manually segmented using the CT component of the PET/CTs as reference. Second, the CT series were transferred to a platform with AI-based algorithms trained on chest CTs for detection and segmentation of lung nodules. Detection and segmentation performance were analyzed. Factors influencing detection rates were explored with binominal logistic regression and radiomic analysis. We also processed 94 PET/CTs negative for pulmonary nodules to investigate frequency and reasons of false-positive findings. The ratio of detected tumors was best in the T1-category (90.4%) and decreased continuously: T2 (70.8%), T3 (29.4%), and T4 (8.8%). Tumor contact with the pleura was a strong predictor of misdetection. Segmentation performance was excellent for T1 tumors (r = 0.908, p<0.001) and tumors without pleural contact (r = 0.971, p<0.001). Volumes of larger tumors were systematically underestimated. There were 0.41 false-positive findings per exam. The algorithm tested facilitates a reliable detection and 3D segmentation of T1/T2 lung tumors on FDG-PET/CTs. The detection and segmentation of more advanced lung tumors is currently imprecise due to the conception of the algorithm for lung nodules <3 cm. Future efforts should therefore focus on this collective to facilitate segmentation of all tumor types and sizes to bridge the gap between CAD applications for screening and staging of lung cancer.
机译:自动检测和分割是部署基于图像的二次分析的先决条件,特别是对于肺肿瘤。但是,目前只有肺结核≤3厘米的应用。因此,在使用FDG-PET / CT的CT组分的肿瘤分期和包括所有T类的肿瘤分期的背景下,测试了用于原发性肺肿瘤的全自动AI基肺结节算法的性能。(T1- T4)。选择320例组织学证实肺癌的FDG-PET / CTS在01/2010和06/2016之间进行。首先,使用PET / CT的CT分量作为参考,手动分割每次扫描内的主要原发性肺肿瘤。其次,CT系列被转移到具有培训的基于AI的算法的平台,用于胸部CTS,用于肺结节的检测和分割。分析了检测和分割性能。影响检测率的因素是探讨了流体逻辑回归和辐射瘤分析。我们还处理了94个PET / CTS对肺结核,以研究假阳性结果的频率和原因。检测到的肿瘤的比率最佳在T1类(90.4%)中,连续降低:T2(70.8%),T3(29.4%)和T4(8.8%)。与胸膜的肿瘤接触是误解的强预测因素。用于T1肿瘤的分割性能优异(r = 0.908,p <0.001)和无胸膜接触的肿瘤(r = 0.971,p <0.001)。系统地低估了较大肿瘤的体积。每次考试有0.41个假阳性结果。该算法测试有助于在FDG-PET / CTS上具有可靠的检测和3D分段T1 / T2肺肿瘤。由于肺结节算法<3cm的算法,目前更晚肺肿瘤的检测和分割目前是不精确的。因此,未来的努力应专注于这一集体,以促进所有肿瘤类型和大小的细分,以弥合CAD应用与肺癌筛查和分期的差距。

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