2024
DOI: 10.1002/ird3.56
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Assessing the reproducibility, stability, and biological interpretability of multimodal computed tomography image features for prognosis in advanced non‐small cell lung cancer

Jiajun Wang,
Gang Dai,
Xiufang Ren
et al.

Abstract: BackgroundDespite the existence of proposed prognostic features on computed tomography (CT) for patients with advanced‐stage non‐small cell lung cancer (NSCLC), including radiologists' handcrafted (RaH) features, radiomics features, and deep learning features, comprehensive studies that examine their reproducibility, stability, and biological interpretability remain limited.MethodsThe Image Biomarker Standardization Initiative‐reported tolerance, Kappa, interclass correlation coefficient, and coefficient of va… Show more

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