Exploring approaches for predictive cancer patient digital twins: Opportunities for collaboration and innovation

Eric Stahlberg(Frederick National Laboratory for Cancer Research), Mohamed H. Abdel‐Rahman(The Ohio State University Wexner Medical Center), Boris Aguilar(Institute for Systems Biology), Alireza Asadpoure(University of Massachusetts Amherst), Robert A. Beckman(Georgetown University), Lynn L. Borkon(Frederick National Laboratory for Cancer Research), Jeffrey N. Bryan(University of Missouri), Colleen M. Cebulla(The Ohio State University Wexner Medical Center), Young Hwan Chang(Oregon Health & Science University), Snigdhansu Chatterjee(University of Minnesota), Jun Deng(Yale University), Sepideh Dolatshahi(University of Virginia), Olivier Gevaert(Stanford University), Emily J. Greenspan(National Institutes of Health), Wenrui Hao(Pennsylvania State University), Tina Hernandez‐Boussard(Stanford University), Pamela Jackson(Mayo Clinic in Florida), Marieke L. Kuijjer(University of Oslo), Adrian V. Lee(University of Pittsburgh), Paul Macklin(Indiana University Bloomington), Subha Madhavan(Georgetown University), Matthew McCoy(Georgetown University), Navid Mohammad Mirzaei(University of Massachusetts Amherst), Talayeh Razzaghi(University of Oklahoma), Heber L. Rocha(Indiana University Bloomington), Leili Shahriyari(University of Massachusetts Amherst), Ilya Shmulevich(Institute for Systems Biology), Daniel G. Stover(The Ohio State University), Yi Sun(University of South Carolina), Tanveer Syeda-Mahmood(IBM Research - Almaden), Jinhua Wang(University of Minnesota), Qi Wang(University of South Carolina), Ioannis K. Zervantonakis(UPMC Hillman Cancer Center)
Frontiers in Digital Health
October 6, 2022
Cited by 108Open Access
Full Text

Abstract

We are rapidly approaching a future in which cancer patient digital twins will reach their potential to predict cancer prevention, diagnosis, and treatment in individual patients. This will be realized based on advances in high performance computing, computational modeling, and an expanding repertoire of observational data across multiple scales and modalities. In 2020, the US National Cancer Institute, and the US Department of Energy, through a trans-disciplinary research community at the intersection of advanced computing and cancer research, initiated team science collaborative projects to explore the development and implementation of predictive Cancer Patient Digital Twins. Several diverse pilot projects were launched to provide key insights into important features of this emerging landscape and to determine the requirements for the development and adoption of cancer patient digital twins. Projects included exploring approaches to using a large cohort of digital twins to perform deep phenotyping and plan treatments at the individual level, prototyping self-learning digital twin platforms, using adaptive digital twin approaches to monitor treatment response and resistance, developing methods to integrate and fuse data and observations across multiple scales, and personalizing treatment based on cancer type. Collectively these efforts have yielded increased insights into the opportunities and challenges facing cancer patient digital twin approaches and helped define a path forward. Given the rapidly growing interest in patient digital twins, this manuscript provides a valuable early progress report of several CPDT pilot projects commenced in common, their overall aims, early progress, lessons learned and future directions that will increasingly involve the broader research community.


Related Papers

No related papers found

Powered by citation graph analysis