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Automatic algorithm for quantifying lung involvement in patients with chronic obstructive pulmonary disease, infection with SARS-CoV-2, paracoccidioidomycosis and no lung disease patients

机译:慢性阻塞性肺疾病患者量化肺参与的自动算法,SARS-COV-2,裂缝酰亚胺尿症和NO肺病患者感染

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In this work, we aimed to develop an automatic algorithm for the quantification of total volume and lung impairments in four different diseases. The quantification was completely automatic based upon high resolution computed tomography exams. The algorithm was capable of measuring volume and differentiating pulmonary involvement including inflammatory process and fibrosis, emphysema, and ground-glass opacities. The algorithm classifies the percentage of each pulmonary involvement when compared to the entire lung volume. Our algorithm was applied to four different patients groups: no lung disease patients, patients diagnosed with SARS-CoV-2, patients with chronic obstructive pulmonary disease , and patients with paracoccidioidomycosis . The quantification results were compared with a semi-automatic algorithm previously validated. Results confirmed that the automatic approach has a good agreement with the semi-automatic. Bland-Altman (B&A) demonstrated a low dispersion when comparing total lung volume, and also when comparing each lung impairment individually. Linear regression adjustment achieved an R value of 0.81 when comparing total lung volume between both methods. Our approach provides a reliable quantification process for physicians, thus impairments measurements contributes to support prognostic decisions in important lung diseases including the infection of SARS-CoV-2.
机译:在这项工作中,我们旨在开发一种用于在四种不同疾病中量化总量和肺部损伤的自动算法。基于高分辨率计算断层扫描考试,量化是完全自动的。该算法能够测量体积和区分肺部受累,包括炎症过程和纤维化,肺气肿和地玻璃不透露率。该算法与整个肺体积相比,将每个肺部受累的百分比分类。我们的算法应用于四个不同的患者组:没有肺病患者,患者被诊断为SARS-COV-2,患者患者慢性阻塞性肺病,以及帕拉基肽症患者。将定量结果与先前验证的半自动算法进行了比较。结果证实,自动方法与半自动吻合良好。 Bland-Altman(B&A)在比较总肺体积时展示了低分散体,并且在单独比较每个肺部损伤时也是如此。在比较两种方法之间的总肺体积时,线性回归调整达到0.81的R值。我们的方法为医生提供了可靠的量化过程,因此障碍测量有助于支持重要的肺部疾病中的预后决策,包括SARS-COV-2的感染。

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