Saved in:
Bibliographic Details
Main Authors: Wilk, Agata Małgorzata, Swierniak, Andrzej, d'Amico, Andrea, Suwiński, Rafał, Fujarewicz, Krzysztof, Borys, Damian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.17668
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908432806707200
author Wilk, Agata Małgorzata
Swierniak, Andrzej
d'Amico, Andrea
Suwiński, Rafał
Fujarewicz, Krzysztof
Borys, Damian
author_facet Wilk, Agata Małgorzata
Swierniak, Andrzej
d'Amico, Andrea
Suwiński, Rafał
Fujarewicz, Krzysztof
Borys, Damian
contents Background. Radiomic features, derived from a region of interest (ROI) in medical images, are valuable as prognostic factors. Selecting an appropriate ROI is critical, and many recent studies have focused on leveraging multiple ROIs by segmenting analogous regions across patients - such as the primary tumour and peritumoral area or subregions of the tumour. These can be straightforwardly incorporated into models as additional features. However, a more complex scenario arises for example in a regionally disseminated disease, when multiple distinct lesions are present. Aim. This study aims to evaluate the feasibility of integrating radiomic data from multiple lesions into survival models. We explore strategies for incorporating these ROIs and hypothesise that including all available lesions can improve model performance. Methods. While each lesion produces a feature vector, the desired result is a unified prediction. We propose methods to aggregate either the feature vectors to form a representative ROI or the modeling results to compute a consolidated risk score. As a proof of concept, we apply these strategies to predict distant metastasis risk in a cohort of 115 non-small cell lung cancer patients, 60% of whom exhibit regionally advanced disease. Two feature sets (radiomics extracted from PET and PET interpolated to CT resolution) are tested across various survival models using a Monte Carlo Cross-Validation framework. Results. Across both feature sets, incorporating all available lesions - rather than limiting analysis to the primary tumour - consistently improved the c-index, irrespective of the survival model used. Conclusion. Lesions beyond the primary tumour carry information that should be utilised in radiomics-based models to enhance predictive ability.
format Preprint
id arxiv_https___arxiv_org_abs_2405_17668
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Towards the use of multiple ROIs for radiomics-based survival modelling: finding a strategy of aggregating lesions
Wilk, Agata Małgorzata
Swierniak, Andrzej
d'Amico, Andrea
Suwiński, Rafał
Fujarewicz, Krzysztof
Borys, Damian
Applications
Background. Radiomic features, derived from a region of interest (ROI) in medical images, are valuable as prognostic factors. Selecting an appropriate ROI is critical, and many recent studies have focused on leveraging multiple ROIs by segmenting analogous regions across patients - such as the primary tumour and peritumoral area or subregions of the tumour. These can be straightforwardly incorporated into models as additional features. However, a more complex scenario arises for example in a regionally disseminated disease, when multiple distinct lesions are present. Aim. This study aims to evaluate the feasibility of integrating radiomic data from multiple lesions into survival models. We explore strategies for incorporating these ROIs and hypothesise that including all available lesions can improve model performance. Methods. While each lesion produces a feature vector, the desired result is a unified prediction. We propose methods to aggregate either the feature vectors to form a representative ROI or the modeling results to compute a consolidated risk score. As a proof of concept, we apply these strategies to predict distant metastasis risk in a cohort of 115 non-small cell lung cancer patients, 60% of whom exhibit regionally advanced disease. Two feature sets (radiomics extracted from PET and PET interpolated to CT resolution) are tested across various survival models using a Monte Carlo Cross-Validation framework. Results. Across both feature sets, incorporating all available lesions - rather than limiting analysis to the primary tumour - consistently improved the c-index, irrespective of the survival model used. Conclusion. Lesions beyond the primary tumour carry information that should be utilised in radiomics-based models to enhance predictive ability.
title Towards the use of multiple ROIs for radiomics-based survival modelling: finding a strategy of aggregating lesions
topic Applications
url https://arxiv.org/abs/2405.17668