AI Article Synopsis

  • A deep learning-based prognostic model (DLPM) was developed and validated to predict survival in patients with idiopathic pulmonary fibrosis (IPF) using chest radiographs from multiple datasets.
  • The model demonstrated equal or superior performance compared to traditional forced vital capacity (FVC) measurements in predicting 3-year survival rates across different external test cohorts.
  • The modified gender-age-physiology index (GAP-CR), which incorporates the DLPM, also outperformed the original GAP index in predicting survival in most test cohorts, highlighting the model's clinical relevance.

Article Abstract

Objectives: To develop and validate a deep learning-based prognostic model in patients with idiopathic pulmonary fibrosis (IPF) using chest radiographs.

Methods: To develop a deep learning-based prognostic model using chest radiographs (DLPM), the patients diagnosed with IPF during 2011-2021 were retrospectively collected and were divided into training (n = 1007), validation (n = 117), and internal test (n = 187) datasets. Up to 10 consecutive radiographs were included for each patient. For external testing, three cohorts from independent institutions were collected (n = 152, 141, and 207). The discrimination performance of DLPM was evaluated using areas under the time-dependent receiver operating characteristic curves (TD-AUCs) for 3-year survival and compared with that of forced vital capacity (FVC). Multivariable Cox regression was performed to investigate whether the DLPM was an independent prognostic factor from FVC. We devised a modified gender-age-physiology (GAP) index (GAP-CR), by replacing D with DLPM.

Results: DLPM showed similar-to-higher performance at predicting 3-year survival than FVC in three external test cohorts (TD-AUC: 0.83 [95% CI: 0.76-0.90] vs. 0.68 [0.59-0.77], p < 0.001; 0.76 [0.68-0.85] vs. 0.70 [0.60-0.80], p = 0.21; 0.79 [0.72-0.86] vs. 0.76 [0.69-0.83], p = 0.41). DLPM worked as an independent prognostic factor from FVC in all three cohorts (ps < 0.001). The GAP-CR index showed a higher 3-year TD-AUC than the original GAP index in two of the three external test cohorts (TD-AUC: 0.85 [0.80-0.91] vs. 0.79 [0.72-0.86], p = 0.02; 0.72 [0.64-0.80] vs. 0.69 [0.61-0.78], p = 0.56; 0.76 [0.69-0.83] vs. 0.68 [0.60-0.76], p = 0.01).

Conclusions: A deep learning model successfully predicted survival in patients with IPF from chest radiographs, comparable to and independent of FVC.

Clinical Relevance Statement: Deep learning-based prognostication from chest radiographs offers comparable-to-higher prognostic performance than forced vital capacity.

Key Points: • A deep learning-based prognostic model for idiopathic pulmonary fibrosis was developed using 6063 radiographs. • The prognostic performance of the model was comparable-to-higher than forced vital capacity, and was independent from FVC in all three external test cohorts. • A modified gender-age-physiology index replacing diffusing capacity for carbon monoxide with the deep learning model showed higher performance than the original index in two external test cohorts.

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http://dx.doi.org/10.1007/s00330-023-10501-wDOI Listing

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