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Predicting Patient Survival with Airway Biomarkers using nn-Unet/Radiomics

Predicting Patient Survival with Airway Biomarkers using nn-Unet/Radiomics

来源:Arxiv_logoArxiv
英文摘要

The primary objective of the AIIB 2023 competition is to evaluate the predictive significance of airway-related imaging biomarkers in determining the survival outcomes of patients with lung fibrosis.This study introduces a comprehensive three-stage approach. Initially, a segmentation network, namely nn-Unet, is employed to delineate the airway's structural boundaries. Subsequently, key features are extracted from the radiomic images centered around the trachea and an enclosing bounding box around the airway. This step is motivated by the potential presence of critical survival-related insights within the tracheal region as well as pertinent information encoded in the structure and dimensions of the airway. Lastly, radiomic features obtained from the segmented areas are integrated into an SVM classifier. We could obtain an overall-score of 0.8601 for the segmentation in Task 1 while 0.7346 for the classification in Task 2.

Zacharia Mesbah、Dhruv Jain、Tsiry Mayet、Romain Modzelewski、Romain Herault、Simon Bernard、Sebastien Thureau、Clement Chatelain

医学研究方法临床医学

Zacharia Mesbah,Dhruv Jain,Tsiry Mayet,Romain Modzelewski,Romain Herault,Simon Bernard,Sebastien Thureau,Clement Chatelain.Predicting Patient Survival with Airway Biomarkers using nn-Unet/Radiomics[EB/OL].(2025-06-13)[2025-07-16].https://arxiv.org/abs/2506.11677.点此复制

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