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Transformation of the National Breast Cancer Guideline Into Data-Driven Clinical Decision Trees.

Authors :
Hendriks MP
Verbeek XAAM
van Vegchel T
van der Sangen MJC
Strobbe LJA
Merkus JWS
Zonderland HM
Smorenburg CH
Jager A
Siesling S
Source :
JCO clinical cancer informatics [JCO Clin Cancer Inform] 2019 May; Vol. 3, pp. 1-14.
Publication Year :
2019

Abstract

Purpose: The essence of guideline recommendations often is intertwined in large texts. This impedes clinical implementation and evaluation and delays timely modular revisions needed to deal with an ever-growing amount of knowledge and application of personalized medicine. The aim of this project was to model guideline recommendations as data-driven clinical decision trees (CDTs) that are clinically interpretable and suitable for implementation in decision support systems.<br />Methods: All recommendations of the Dutch national breast cancer guideline for nonmetastatic breast cancer were translated into CDTs. CDTs were constructed by nodes, branches, and leaves that represent data items (patient and tumor characteristics [eg, T stage]), data item values (eg, T2 or less), and recommendations (eg, chemotherapy), respectively. For all data items, source of origin was identified (eg, pathology), and where applicable, data item values were defined on the basis of existing classification and coding systems (eg, TNM, Breast Imaging Reporting and Data System, Systematized Nomenclature of Medicine). All unique routes through all CDTs were counted to measure the degree of data-based personalization of recommendations.<br />Results: In total, 60 CDTs were necessary to cover the whole guideline and were driven by 114 data items. Data items originated from pathology (49%), radiology (27%), clinical (12%), and multidisciplinary team (12%) reports. Of all data items, 101 (89%) could be classified by existing classification and coding systems. All 60 CDTs could be integrated in an interactive decision support app that contained 376 unique patient subpopulations.<br />Conclusion: By defining data items unambiguously and unequivocally and coding them to an international coding system, it was possible to present a complex guideline as systematically constructed modular data-driven CDTs that are clinically interpretable and accessible in a decision support app.

Details

Language :
English
ISSN :
2473-4276
Volume :
3
Database :
MEDLINE
Journal :
JCO clinical cancer informatics
Publication Type :
Academic Journal
Accession number :
31141422
Full Text :
https://doi.org/10.1200/CCI.18.00150