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Published in: Journal of Cancer Research and Clinical Oncology 10/2023

16-03-2023 | Computed Tomography | Research

Pretherapy investigations using highly robust visualized biomarkers from CT imaging by multiple machine-learning techniques toward its prognosis prediction for ALK-inhibitor therapy in NSCLC: a feasibility study

Authors: Jingjing Sun, Feng Li, Jiantao Yang, Chen Lin, Xianglan Zhou, Na Liu, Bingqian Zhang, Ge Song, Wenxian Wang, Chencui Huang, Zhengbo Song, Lei Shi

Published in: Journal of Cancer Research and Clinical Oncology | Issue 10/2023

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Abstract

Purpose

Molecularly targeted therapy has revolutionized the therapeutic landscape and is emerging as the first-line treatment option for ALK-rearranged non-small-cell lung cancer (NSCLC). In this study, the highly informative and robust biomarkers based on pre-treatment CT images and clinicopathologic features will be developed and validated to predict the prognosis for ALK-inhibitor therapy in NSCLC patients.

Methods

A total of 161 ALK-positive NSCLC patients treated with ALK inhibitors were retrospectively collected as training, validation and test sets from multi-center institutions. Cox proportional hazard regression (CPH) penalized by LASSO and random survival forest (RSF) coupled with recursive feature elimination (RFE) were used for radiomics and clinical features identification and model construction. An overlapping post-processing method was extra added to training process to investigate the stronger biomarker on the whole set.

Results

123 of the collected cases progressed after a median follow-up of 15.5 months (IQR, 8.3–25.3). The T and M staging, pericardial effusion, age and ALK inhibitor-alectinib were determined as significant predictors in the survival analysis. Furthermore, we visualized the finally retained 4 radiomics feature. The RSF models built from overlapping-processed clinical and radiomics features respectively reached the maximum C-index of 0.68 and 0.75,but the combination of them,radioclinical signature, improved the score to 0.78. The model on the validation and external test datasets yielded the C-index of 0.73 and 0.79, with the iAUC of 0.76 and 0.83, the IBS of 0.119 and 0.112.

Conclusion

With respect to a simple selection strategy of overlapping optimal radiomics and clinical features from different survival models may promote better progression-free survival(PFS) prediction than conventional survival analysis, which provides a potential method for guiding personalized pre-treatment options of NSCLC.
Appendix
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Literature
go back to reference Pölsterl S (2020) Scikit-Survival: A library for time-to-event analysis built on top of scikit-Learn. J Mach Learn Res 21(212):1–6 Pölsterl S (2020) Scikit-Survival: A library for time-to-event analysis built on top of scikit-Learn. J Mach Learn Res 21(212):1–6
Metadata
Title
Pretherapy investigations using highly robust visualized biomarkers from CT imaging by multiple machine-learning techniques toward its prognosis prediction for ALK-inhibitor therapy in NSCLC: a feasibility study
Authors
Jingjing Sun
Feng Li
Jiantao Yang
Chen Lin
Xianglan Zhou
Na Liu
Bingqian Zhang
Ge Song
Wenxian Wang
Chencui Huang
Zhengbo Song
Lei Shi
Publication date
16-03-2023
Publisher
Springer Berlin Heidelberg
Published in
Journal of Cancer Research and Clinical Oncology / Issue 10/2023
Print ISSN: 0171-5216
Electronic ISSN: 1432-1335
DOI
https://doi.org/10.1007/s00432-023-04615-3

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