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Idiopathic Pulmonary Fibrosis Mortality Risk Prediction Based on Artificial Intelligence: The CTPF Model
被引:7
|作者:
Wu, Xuening
Yin, Chengsheng
Chen, Xianqiu
Zhang, Yuan
Su, Yiliang
Shi, Jingyun
Weng, Dong
Jiang, Xing
Zhang, Aihong
Zhang, Wenqiang
Li, Huiping
机构:
[1] The Academy for Engineering and Technology, Fudan University, Shanghai
[2] Department of Respiratory Medicine, Shanghai Pulmonary Hospital, Tongji University, School of Medicine, Shanghai
[3] Department of Pulmonary and Critical Care Medicine, Yijishan Hospital of Wannan Medical College, Wuhu
[4] Department of Radiology, Shanghai Pulmonary Hospital, School of Medicine, Tongji University, Shanghai
[5] Department of Medical Statistics, School of Medicine, Tongji University, Shanghai
基金:
美国国家科学基金会;
关键词:
artificial intelligence (AI);
deep learning;
semantic segmentation;
idiopathic pulmonary fibrosis (IPF);
pulmonary fibrosis stage;
disease severity grade;
LUNG TRANSPLANTATION;
CLINICAL-PRACTICE;
SCORING SYSTEM;
SURVIVAL;
DIAGNOSIS;
DISEASE;
INDEX;
D O I:
10.3389/fphar.2022.878764
中图分类号:
R9 [药学];
学科分类号:
1007 ;
摘要:
Background: Idiopathic pulmonary fibrosis (IPF) needs a precise prediction method for its prognosis. This study took advantage of artificial intelligence (AI) deep learning to develop a new mortality risk prediction model for IPF patients.Methods: We established an artificial intelligence honeycomb segmentation system that segmented the honeycomb tissue area automatically from 102 manually labeled (by radiologists) cases of IPF patients' CT images. The percentage of honeycomb in the lung was calculated as the CT fibrosis score (CTS). The severity of the patients was evaluated by pulmonary function and physiological feature (PF) parameters (including FVC%pred, DLco%pred, SpO2%, age, and gender). Another 206 IPF cases were randomly divided into a training set (n = 165) and a verification set (n = 41) to calculate the fibrosis percentage in each case by the AI system mentioned previously. Then, using a competing risk (Fine-Gray) proportional hazards model, a risk score model was created according to the training set's patient data and used the validation data set to validate this model.Result: The final risk prediction model (CTPF) was established, and it included the CT stages and the PF (pulmonary function and physiological features) grades. The CT stages were defined into three stages: stage I (CTS <= 5), stage II (5 < CTS<25), and stage III (>= 25). The PF grades were classified into mild (a, 0-3 points), moderate (b, 4-6 points), and severe (c, 7-10 points). The AUC index and Briers scores at 1, 2, and 3 years in the training set were as follows: 74.3 [63.2,85.4], 8.6 [2.4,14.8]; 78 [70.2,85.9], 16.0 [10.1,22.0]; and 72.8 [58.3,87.3], 18.2 [11.9,24.6]. The results of the validation sets were similar and suggested that high-risk patients had significantly higher mortality rates.Conclusion: This CTPF model with AI technology can predict mortality risk in IPF precisely.
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页数:12
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