计算机断层扫描机器学习分类器与间质性肺病死亡率的相关性

IF 2.4 Q2 RESPIRATORY SYSTEM
Onofre Moran-Mendoza , Abhishek Singla , Angad Kalra , Michael Muelly , Joshua J. Reicher
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引用次数: 0

摘要

背景设计并验证了一种名为 "Fibresolve "的机器学习分类系统,作为特发性肺纤维化(IPF)无创诊断的辅助工具。该系统使用深度学习算法分析胸部计算机断层扫描(CT)成像。我们假设 Fibresolve 可以有效预测间质性肺疾病(ILD)的死亡率。在这项分析中,我们评估了Fibresolve在228名有随访数据的IPF和其他ILD患者中预测死亡率的有用性。我们采用 Cox 回归分析法,对性别、年龄和生理(GAP)评分以及其他已知的 IPF 死亡率预测因素进行了调整。结果在中位 2.8 年(5 至 3434 天)的随访期间,89 名患者死亡。在对 GAP 评分和其他死亡风险因素进行调整后,Fibresolve 评分能显著预测随访期间的死亡风险(HR:7.14;95% CI:1.31-38.85;P = 0.02),强迫生命容量和肺癌病史也能预测死亡风险。在对 GAP 阶段和其他变量进行调整后,将 Fibresolve 评分分为三等分,可显著预测死亡风险(模型 p = 0.027;第二等分 HR 1.37;95% CI:0.77-2.42;第三等分 HR 2.19)。结论机器学习分类器 Fibresolve 可独立预测 ILD 的死亡率,其预后效果与仅基于 CT 图像的 GAP 相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computed tomography machine learning classifier correlates with mortality in interstitial lung disease

Background

A machine learning classifier system, Fibresolve, was designed and validated as an adjunct to non-invasive diagnosis in idiopathic pulmonary fibrosis (IPF). The system uses a deep learning algorithm to analyze chest computed tomography (CT) imaging. We hypothesized that Fibresolve is a useful predictor of mortality in interstitial lung diseases (ILD).

Methods

Fibresolve was previously validated in a multi-site >500-patient dataset. In this analysis, we assessed the usefulness of Fibresolve to predict mortality in a subset of 228 patients with IPF and other ILDs in whom follow up data was available. We applied Cox regression analysis adjusting for the Gender, Age, and Physiology (GAP) score and for other known predictors of mortality in IPF. We also analyzed the role of Fibresolve as tertiles adjusting for GAP stages.

Results

During a median follow-up of 2.8 years (range 5 to 3434 days), 89 patients died. After adjusting for GAP score and other mortality risk factors, the Fibresolve score significantly predicted the risk of death (HR: 7.14; 95% CI: 1.31–38.85; p = 0.02) during the follow-up period, as did forced vital capacity and history of lung cancer. After adjusting for GAP stages and other variables, Fibresolve score split into tertiles significantly predicted the risk of death (p = 0.027 for the model; HR 1.37 for 2nd tertile; 95% CI: 0.77–2.42. HR 2.19 for 3rd tertile; 95% CI: 1.22–3.93).

Conclusions

The machine learning classifier Fibresolve demonstrated to be an independent predictor of mortality in ILDs, with prognostic performance equivalent to GAP based solely on CT images.

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来源期刊
Respiratory investigation
Respiratory investigation RESPIRATORY SYSTEM-
CiteScore
4.90
自引率
6.50%
发文量
114
审稿时长
64 days
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