Departments of Radiology and Innovation, Diagnósticos da América (Dasa), São Paulo, São Paulo, Brasil.
Department of Innovation, Hospital Alemão Oswaldo Cruz, São Paulo, São Paulo, Brasil.
PLoS One. 2021 Feb 1;16(2):e0245384. doi: 10.1371/journal.pone.0245384. eCollection 2021.
The new coronavirus, which began to be called SARS-CoV-2, is a single-stranded RNA beta coronavirus, initially identified in Wuhan (Hubei province, China) and currently spreading across six continents causing a considerable harm to patients, with no specific tools until now to provide prognostic outcomes. Thus, the aim of this study is to evaluate possible findings on chest CT of patients with signs and symptoms of respiratory syndromes and positive epidemiological factors for COVID-19 infection and to correlate them with the course of the disease. In this sense, it is also expected to develop specific machine learning algorithm for this purpose, through pulmonary segmentation, which can predict possible prognostic factors, through more accurate results. Our alternative hypothesis is that the machine learning model based on clinical, radiological and epidemiological data will be able to predict the severity prognosis of patients infected with COVID-19. We will perform a multicenter retrospective longitudinal study to obtain a large number of cases in a short period of time, for better study validation. Our convenience sample (at least 20 cases for each outcome) will be collected in each center considering the inclusion and exclusion criteria. We will evaluate patients who enter the hospital with clinical signs and symptoms of acute respiratory syndrome, from March to May 2020. We will include individuals with signs and symptoms of acute respiratory syndrome, with positive epidemiological history for COVID-19, who have performed a chest computed tomography. We will assess chest CT of these patients and to correlate them with the course of the disease. Primary outcomes:1) Time to hospital discharge; 2) Length of stay in the ICU; 3) orotracheal intubation;4) Development of Acute Respiratory Discomfort Syndrome. Secondary outcomes:1) Sepsis; 2) Hypotension or cardiocirculatory dysfunction requiring the prescription of vasopressors or inotropes; 3) Coagulopathy; 4) Acute Myocardial Infarction; 5) Acute Renal Insufficiency; 6) Death. We will use the AUC and F1-score of these algorithms as the main metrics, and we hope to identify algorithms capable of generalizing their results for each specified primary and secondary outcome.
新型冠状病毒(SARS-CoV-2),属于单链 RNA 乙型冠状病毒,最初在武汉(中国湖北省)发现,目前已传播至六大洲,对患者造成严重危害,目前尚无特定工具可提供预后结果。因此,本研究旨在评估具有呼吸道综合征体征和症状且具有 COVID-19 感染阳性流行病学因素的患者的胸部 CT 可能发现,并将其与疾病过程相关联。从这个意义上说,我们还希望通过肺部分割开发出针对该目的的特定机器学习算法,从而通过更准确的结果预测可能的预后因素。我们的替代假设是,基于临床、影像学和流行病学数据的机器学习模型将能够预测 COVID-19 感染患者的严重程度预后。我们将进行一项多中心回顾性纵向研究,以在短时间内获得大量病例,从而更好地验证研究结果。我们的方便样本(每个结局至少 20 例)将在每个中心根据纳入和排除标准进行收集。我们将评估在 2020 年 3 月至 5 月期间因临床急性呼吸综合征体征和症状入院的患者。我们将纳入具有急性呼吸综合征体征和症状且具有 COVID-19 阳性流行病学史且已进行胸部计算机断层扫描的个体。我们将评估这些患者的胸部 CT,并将其与疾病过程相关联。主要结局:1)住院出院时间;2)重症监护病房住院时间;3)气管插管;4)急性呼吸窘迫综合征发展。次要结局:1)败血症;2)低血压或心血管功能障碍,需要开具升压药或正性肌力药;3)凝血功能障碍;4)急性心肌梗死;5)急性肾功能衰竭;6)死亡。我们将使用这些算法的 AUC 和 F1 分数作为主要指标,我们希望识别出能够将其结果推广到每个指定的主要和次要结局的算法。