Saved in:
Bibliographic Details
Main Authors: Molnárová, Eva, Mulders, Ties A., Spee-Dropková, Marcela, Spekking, Louise M., Azimi, Sepinoud, Grossmann, Irene, Dingemans, Anne-Marie C., Staňková, Kateřina
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.19485
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911332639440896
author Molnárová, Eva
Mulders, Ties A.
Spee-Dropková, Marcela
Spekking, Louise M.
Azimi, Sepinoud
Grossmann, Irene
Dingemans, Anne-Marie C.
Staňková, Kateřina
author_facet Molnárová, Eva
Mulders, Ties A.
Spee-Dropková, Marcela
Spekking, Louise M.
Azimi, Sepinoud
Grossmann, Irene
Dingemans, Anne-Marie C.
Staňková, Kateřina
contents Evolutionary therapy (ET) aims to steer tumor evolution by adjusting treatment timing and dosing to control rather than eradicate tumor burden. Clinical use requires reliable monitoring of tumor dynamics to inform mathematical models that guide therapy. In cancers such as metastatic castrate-resistant prostate cancer and relapsed platinum-sensitive ovarian cancer, ET models are informed by serial serum biomarkers. For cancers lacking reliable biomarkers, such as metastatic non-small cell lung cancer (NSCLC), radiographic imaging remains the primary method for treatment response assessment, typically using RECIST 1.1 criteria. RECIST, which tracks a few lesions with one-dimensional (1D) measurements and defines progression relative to the nadir, the smallest tumor burden recorded after treatment, was not designed to support ET. It may miss early regrowth, underrepresent tumor burden, and obscure disease trends. Using a virtual NSCLC patient model, we demonstrate that lesion selection and measurement dimensionality strongly affect progression detection. Two-dimensional metrics provide modest improvement, but only 3D volumetric measurements accurately capture both tumor burden and its dynamics, which are key requirements for ET. To support ET in cancers lacking biomarkers, response assessment must evolve beyond RECIST by integrating volumetric imaging, automated segmentation, and potentially liquid biopsies, alongside redefining progression criteria to enable adaptive, patient-centered treatments.
format Preprint
id arxiv_https___arxiv_org_abs_2512_19485
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enabling Evolutionary Therapy in Metastatic Cancer Lacking Serum Biomarkers
Molnárová, Eva
Mulders, Ties A.
Spee-Dropková, Marcela
Spekking, Louise M.
Azimi, Sepinoud
Grossmann, Irene
Dingemans, Anne-Marie C.
Staňková, Kateřina
Populations and Evolution
Evolutionary therapy (ET) aims to steer tumor evolution by adjusting treatment timing and dosing to control rather than eradicate tumor burden. Clinical use requires reliable monitoring of tumor dynamics to inform mathematical models that guide therapy. In cancers such as metastatic castrate-resistant prostate cancer and relapsed platinum-sensitive ovarian cancer, ET models are informed by serial serum biomarkers. For cancers lacking reliable biomarkers, such as metastatic non-small cell lung cancer (NSCLC), radiographic imaging remains the primary method for treatment response assessment, typically using RECIST 1.1 criteria. RECIST, which tracks a few lesions with one-dimensional (1D) measurements and defines progression relative to the nadir, the smallest tumor burden recorded after treatment, was not designed to support ET. It may miss early regrowth, underrepresent tumor burden, and obscure disease trends. Using a virtual NSCLC patient model, we demonstrate that lesion selection and measurement dimensionality strongly affect progression detection. Two-dimensional metrics provide modest improvement, but only 3D volumetric measurements accurately capture both tumor burden and its dynamics, which are key requirements for ET. To support ET in cancers lacking biomarkers, response assessment must evolve beyond RECIST by integrating volumetric imaging, automated segmentation, and potentially liquid biopsies, alongside redefining progression criteria to enable adaptive, patient-centered treatments.
title Enabling Evolutionary Therapy in Metastatic Cancer Lacking Serum Biomarkers
topic Populations and Evolution
url https://arxiv.org/abs/2512.19485