Keikes Lotte, Kos Milan, Verbeek Xander A A M, Van Vegchel Thijs, Nagtegaal Iris D, Lahaye Max J, Méndez Romero Alejandra, De Bruijn Sandra, Verheul Henk M W, Rütten Heidi, Punt Cornelis J A, Tanis Pieter J, Van Oijen Martijn G H
Department of Medical Oncology, Cancer Center Amsterdam, Amsterdam UMC, University of Amsterdam, Meibergdreef 9, Amsterdam, Noord-Holland 1105 AZ, Netherlands.
Department of Research, Netherlands Comprehensive Cancer Organisation, Godebaldkwartier 419, Utrecht 3511 DT, Netherlands.
Int J Qual Health Care. 2021 Apr 3;33(2). doi: 10.1093/intqhc/mzab051.
The interpretation and clinical application of guidelines can be challenging and time-consuming, which may result in noncompliance to guidelines. The aim of this study was to convert the Dutch guideline for colorectal cancer (CRC) into decision trees and subsequently implement decision trees in an online decision support environment to facilitate guideline application.
The recommendations of the Dutch CRC guidelines (published in 2014) were translated into decision trees consisting of decision nodes, branches and leaves that represent data items, data item values and recommendations, respectively. Decision trees were discussed with experts in the field and published as interactive open access decision support software (available at www.oncoguide.nl). Decision tree validation and a concordance analysis were performed using consecutive reports (January 2016-January 2017) from CRC multidisciplinary tumour boards (MTBs) at Amsterdam University Medical Centers, location AMC.
In total, we developed 34 decision trees driven by 101 decision nodes based on the guideline recommendations. Decision trees represented recommendations for diagnostics (n = 1), staging (n = 10), primary treatment (colon: n = 1, rectum: n = 5, colorectal: n = 9), pathology (n = 4) and follow-up (n = 3) and included one overview decision tree for optimal navigation. We identified several guideline information gaps and areas of inconclusive evidence. A total of 158 patients' MTB reports were eligible for decision tree validation and resulted in treatment recommendations in 80% of cases. The concordance rate between decision tree treatment recommendations and MTB advices was 81%. Decision trees reported in 22 out of 24 non-concordant cases (92%) that no guideline recommendation was available.
We successfully converted the Dutch CRC guideline into decision trees and identified several information gaps and areas of inconclusive evidence, the latter being the main cause of the observed disagreement between decision tree recommendations and MTB advices. Decision trees may contribute to future strategies to optimize quality of care for CRC patients.
指南的解读和临床应用具有挑战性且耗时,这可能导致不遵守指南。本研究的目的是将荷兰结直肠癌(CRC)指南转化为决策树,并随后在在线决策支持环境中实施决策树,以促进指南的应用。
将荷兰CRC指南(2014年发布)的建议转化为决策树,决策树由决策节点、分支和叶组成,分别代表数据项、数据项值和建议。与该领域的专家讨论决策树,并作为交互式开放获取决策支持软件发布(可在www.oncoguide.nl获取)。使用阿姆斯特丹大学医学中心(AMC院区)CRC多学科肿瘤委员会(MTB)2016年1月至2017年1月的连续报告进行决策树验证和一致性分析。
基于指南建议,我们共开发了由101个决策节点驱动的34个决策树。决策树代表了诊断(n = 1)、分期(n = 10)、初始治疗(结肠:n = 1,直肠:n = 5,结直肠:n = 9)、病理学(n = 4)和随访(n = 3)的建议,并包括一个用于优化导航的概述决策树。我们发现了几个指南信息空白和证据不确定的领域。共有158份患者的MTB报告符合决策树验证条件,80%的病例得出了治疗建议。决策树治疗建议与MTB建议之间的一致性率为81%。在24例不一致的病例中,决策树在22例(92%)中报告没有可用的指南建议。
我们成功地将荷兰CRC指南转化为决策树,并发现了几个信息空白和证据不确定的领域,后者是观察到的决策树建议与MTB建议之间不一致的主要原因。决策树可能有助于未来优化CRC患者护理质量的策略。