With much gratitude for discussions from Chris Chidley, Ash Alizadeh, Palmer lab members and others, and support from NCI, NIGMS, @unclineberger.bsky.social,
@unc-phco.bsky.social and UNC Computational Medicine Program
13/13
@acpalmer.bsky.social
With much gratitude for discussions from Chris Chidley, Ash Alizadeh, Palmer lab members and others, and support from NCI, NIGMS, @unclineberger.bsky.social,
@unc-phco.bsky.social and UNC Computational Medicine Program
13/13
This model provides quantitative insight into how combination therapy overcomes heterogeneity within and between tumors to cure many patients with Large B-Cell Lymphoma.
We hope it is a useful tool to design new curative-intent combinations using clinical data on new drugs.
12/n
Importantly, first-author Amy Pomeroy had predicted the success of Pola-R-CHP *before* the trial read out, as she reported from the model prototype back in 2021:
www.amypomeroy.com/post/predicting-the-results-of-the-polarix-trial
11/n
Looking at βRCHOP+Xβ trials, we used clinical data on each βdrug Xβ to predict the clinical trial results.
Only Pola-R-CHP, and Tucidinostat plus R-CHOP, were expected to succeed, and indeed they did
asco.org/abstracts-pr...
nejm.org/doi/full/10....
10/n
We calibrated the model to reproduce Progression-Free Survival for the CHOP and RCHOP regimens for Diffuse Large B-Cell Lymphoma.
Simulated tumor population shrinkage agreed well with observed changes in circulating tumor DNA after the first cycle of RCHOP:
9/n
From this βbottom-upβ model of tumor heterogeneity, simulating treatment responses in a cohort of patients produces a Kaplan-Meier curve of Progression-Free Survival:
8/n
This extends to combination therapy by using a different dimension of heterogeneity for each drug
This way, patients and cells vary in their sensitivity to different drugs; for example, some patients can be more sensitive to one drug than another, or sensitive to both, etc.
7/n
Extending to patient variability, a group of patients - say in a clinical trial - also have a distribution of drug response phenotypes, with each patientβs cancer containing a range of cellular heterogeneity around the average drug sensitivity of that individual.
6/n
In this model of heterogeneity as a distribution of states, each cycle of chemotherapy progressively shifts the distribution to increasingly drug-resistant states
5/n
Many insightful models of tumor heterogeneity described drug-sensitive and drug-resistant subpopulations.
Based on clone-tracing data, we modelled cellular heterogeneity as a distribution of sensitivity phenotypes, reflecting many complex influences on drug response
4/n
We built a model that unifies intra-tumor and inter-patient heterogeneity in drug sensitivity to understand the clinical efficacy of curative-intent combination therapy for Large B-Cell Lymphoma.
3/n
Cell-to-cell and patient-to-patient heterogeneity both have a role in the success of drug combinations.
While inter-patient variation can explain better response rates of combos for incurable cancers, CURES need a regimen to also overcome cellular heterogeneity and evolution
2/n
New paper, with Amy Pomeroy!
A model of intratumor and interpatient heterogeneity explains clinical trials of curative combination therapy for lymphoma
now out in Blood Cancer Discovery:
doi.org/10.1158/2643...
#mathonc #lymsm #BloodCancer
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