Predicting spread through air space of lung adenocarcinoma based on deep learning and machine learning models
Author:
Affiliation:
1. Hebei General Hospital
2. Hebei Bio-High Technology Development Co
3. The First Affiliated Hospital of China Medical University
Abstract
OBJECTIVE: The aim of this study was to develop a machine learning model that can predict spread through air space (STAS) of lung adenocarcinoma preoperatively. STAS is associated with poor prognosis in invasive lung adenocarcinoma. Therefore non-invasive and accurate pre-surgical prediction of STAS in patients with lung adenocarcinoma is essential for individualised patient management. METHODS:We included 138 patients with invasive lung adenocarcinoma who underwent lobectomy, collected their preoperative imaging data and clinical features, built a model for predicting STAS using machine learning and deep learning methods, and validated the efficacy of the model. Finally a nomogram was created based on logistic regression (LR). RESULTS:Imaging histology features showed good model efficacy in both the training set (LR AUC=0.764) and the test set (LR AUC=0.776), and we combined the imaging histology and clinical features to jointly build a nomogram graph (AUC=0.878), extracted the deep learning features, and built a machine learning model based on the ResNET50 algorithm, where the LR AUC=0.918 CONCLUSIONS:This presented radiomics model can be served as a non-invasive for predicting STAS in Infiltrating lung adenocarcinoma.
Publisher
Springer Science and Business Media LLC
Reference28 articles.
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