z-logo
open-access-imgOpen Access
Decision Support Systems in Oncology
Author(s) -
Seán Walsh,
Evelyn E.C. de Jong,
Janita E. van Timmeren,
Abdalla Ibrahim,
Inge Compter,
Jurgen Peerlings,
Sebastian Sanduleanu,
Turkey Refaee,
Simon Keek,
Ruben T. H. M. Larue,
Yvonka van Wijk,
Aniek J.G. Even,
Arthur Jochems,
Mohamed Samir Barakat,
Ralph T.H. Leijenaar,
Philippe Lambin
Publication year - 2019
Publication title -
jco clinical cancer informatics
Language(s) - Uncategorized
Resource type - Journals
SCImago Journal Rank - 1.188
H-Index - 12
ISSN - 2473-4276
DOI - 10.1200/cci.18.00001
Subject(s) - oncology , medical physics , medicine , computer science
Precision medicine is the future of health care: please watch the animation at https://vimeo.com/241154708 . As a technology-intensive and -dependent medical discipline, oncology will be at the vanguard of this impending change. However, to bring about precision medicine, a fundamental conundrum must be solved: Human cognitive capacity, typically constrained to five variables for decision making in the context of the increasing number of available biomarkers and therapeutic options, is a limiting factor to the realization of precision medicine. Given this level of complexity and the restriction of human decision making, current methods are untenable. A solution to this challenge is multifactorial decision support systems (DSSs), continuously learning artificial intelligence platforms that integrate all available data-clinical, imaging, biologic, genetic, cost-to produce validated predictive models. DSSs compare the personalized probable outcomes-toxicity, tumor control, quality of life, cost effectiveness-of various care pathway decisions to ensure optimal efficacy and economy. DSSs can be integrated into the workflows both strategically (at the multidisciplinary tumor board level to support treatment choice, eg, surgery or radiotherapy) and tactically (at the specialist level to support treatment technique, eg, prostate spacer or not). In some countries, the reimbursement of certain treatments, such as proton therapy, is already conditional on the basis that a DSS is used. DSSs have many stakeholders-clinicians, medical directors, medical insurers, patient advocacy groups-and are a natural consequence of big data in health care. Here, we provide an overview of DSSs, their challenges, opportunities, and capacity to improve clinical decision making, with an emphasis on the utility in oncology.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here