TY - JOUR
T1 - Approaches to developing de novo cancer population models to examine questions about cancer and race in bladder, gastric, and endometrial cancer and multiple myeloma
T2 - the Cancer Intervention and Surveillance Modeling Network incubator program
AU - for the CISNET Incubator Modeling Groups
AU - Sereda, Yuliia
AU - Alarid-Escudero, Fernando
AU - Bickell, Nina A.
AU - Chang, Su Hsin
AU - Colditz, Graham A.
AU - Hur, Chin
AU - Jalal, Hawre
AU - Myers, Evan R.
AU - Layne, Tracy M.
AU - Wang, Shi Yi
AU - Yeh, Jennifer M.
AU - Trikalinos, Thomas A.
N1 - Publisher Copyright:
© 2023 Oxford University Press. All rights reserved.
PY - 2023/11/1
Y1 - 2023/11/1
N2 - Background: We are developing 10 de novo population-level mathematical models in 4 malignancies (multiple myeloma and bladder, gastric, and uterine cancers). Each of these sites has documented disparities in outcome that are believed to be downstream effects of systemic racism. Methods: Ten models are being independently developed as part of the Cancer Intervention and Surveillance Modeling Network incubator program. These models simulate trends in cancer incidence, early diagnosis, treatment, and mortality for the general population and are stratified by racial subgroup. Model inputs are based on large population datasets, clinical trials, and observational studies. Some core parameters are shared, and other parameters are model specific. All models are microsimulation models that use self-reported race to stratify model inputs. They can simulate the distribution of relevant risk factors (eg, smoking, obesity) and insurance status (for multiple myeloma and uterine cancer) in US birth cohorts and population. Discussion: The models aim to refine approaches in prevention, detection, and management of 4 cancers given uncertainties and constraints. They will help explore whether the observed racial disparities are explainable by inequities, assess the effects of existing and potential cancer prevention and control policies on health equity and disparities, and identify policies that balance efficiency and fairness in decreasing cancer mortality.
AB - Background: We are developing 10 de novo population-level mathematical models in 4 malignancies (multiple myeloma and bladder, gastric, and uterine cancers). Each of these sites has documented disparities in outcome that are believed to be downstream effects of systemic racism. Methods: Ten models are being independently developed as part of the Cancer Intervention and Surveillance Modeling Network incubator program. These models simulate trends in cancer incidence, early diagnosis, treatment, and mortality for the general population and are stratified by racial subgroup. Model inputs are based on large population datasets, clinical trials, and observational studies. Some core parameters are shared, and other parameters are model specific. All models are microsimulation models that use self-reported race to stratify model inputs. They can simulate the distribution of relevant risk factors (eg, smoking, obesity) and insurance status (for multiple myeloma and uterine cancer) in US birth cohorts and population. Discussion: The models aim to refine approaches in prevention, detection, and management of 4 cancers given uncertainties and constraints. They will help explore whether the observed racial disparities are explainable by inequities, assess the effects of existing and potential cancer prevention and control policies on health equity and disparities, and identify policies that balance efficiency and fairness in decreasing cancer mortality.
UR - http://www.scopus.com/inward/record.url?scp=85176459406&partnerID=8YFLogxK
U2 - 10.1093/jncimonographs/lgad021
DO - 10.1093/jncimonographs/lgad021
M3 - Article
C2 - 37947329
AN - SCOPUS:85176459406
SN - 1052-6773
VL - 2023
SP - 219
EP - 230
JO - Journal of the National Cancer Institute - Monographs
JF - Journal of the National Cancer Institute - Monographs
IS - 62
ER -