Performance in prognostic capacity and efficiency of the Thoracic Care Suite GE AI tool applied to chest radiography of patients with COVID-19 pneumonia

J.M. Plasencia-Martínez , R. Pérez-Costa , M. Ballesta-Ruiz , J.M. García-Santos
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Abstract

Objective

Rapid progression of COVID-19 pneumonia may put patients at risk of requiring ventilatory support, such as non-invasive mechanical ventilation or endotracheal intubation. Implementing tools that detect COVID-19 pneumonia can improve the patient’s healthcare. We aim to evaluate the efficacy and efficiency of the artificial intelligence (AI) tool GE Healthcare’s Thoracic Care Suite (featuring Lunit INSIGHT CXR, TCS) to predict the ventilatory support need based on pneumonic progression of COVID-19 on consecutive chest X-rays.

Methods

Outpatients with confirmed SARS-CoV-2 infection, with chest X-ray (CXR) findings probable or indeterminate for COVID-19 pneumonia, who required a second CXR due to unfavorableclinical course, were collected. The number of affected lung fields for the two CXRs was assessed using the AI tool.

Results

One hundred fourteen patients (57.4 ± 14.2 years, 65−57%-men) were retrospectively collected. Fifteen (13.2%) required ventilatory support. Progression of pneumonic extension ≥0.5 lung fields per day compared to pneumonia onset, detected using the TCS tool, increased the risk of requiring ventilatory support by 4-fold. Analyzing the AI output required 26 s of radiological time.

Conclusions

Applying the AI tool, Thoracic Care Suite, to CXR of patients with COVID-19 pneumonia allows us to anticipate ventilatory support requirements requiring less than half a minute.

应用于COVID-19肺炎患者胸片的Thoracic Care Suite GE AI工具的预后能力和效率表现
目的COVID-19肺炎的快速进展可能使患者面临需要通气支持的风险,如无创机械通气或气管插管。实施检测COVID-19肺炎的工具可以改善患者的医疗保健。我们的目标是评估人工智能(AI)工具GE医疗的胸部护理套件(包括Lunit INSIGHT CXR, TCS)的疗效和效率,以预测基于连续胸部x射线的COVID-19肺炎进展的通气支持需求。方法收集确诊为SARS-CoV-2感染的门诊患者,其胸部x线检查结果可能为COVID-19肺炎或不确定为COVID-19肺炎,因临床病程不利而需要进行第二次x线检查。使用人工智能工具评估两例cxr患者受影响的肺野数。结果回顾性收集114例患者(57.4±14.2岁,男性65−57%)。15例(13.2%)需要呼吸支持。与肺炎发作相比,使用TCS工具检测到每日肺炎扩展≥0.5个肺野的进展,使需要通气支持的风险增加了4倍。分析人工智能输出需要26秒的放射时间。结论将人工智能工具胸腔护理套件应用于COVID-19肺炎患者的CXR,使我们能够在不到半分钟的时间内预测呼吸支持需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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