Beuken Maik J M, Kanera Iris M, Ezendam Nicole Paulina Maria, Braun Susy, Zoet Martijn
Faculty of Financial Management, Research Centre for Future Proof Financials, Zuyd University of Applied Sciences, Sittard, Netherlands.
Faculty of Health, School of Physiotherapy, Zuyd University of Applied Sciences, Heerlen, Netherlands.
JMIR Cancer. 2022 Dec 27;8(4):e42908. doi: 10.2196/42908.
A steady increase in colorectal and prostate cancer survivors and patients with these cancers is expected in the upcoming years. As a result of primary cancer treatments, patients have numerous additional complaints, increasing the need for cancer aftercare. However, referrals to appropriate cancer aftercare remain inadequate, despite a wide range of aftercare options. Caregivers and patients often do not know which aftercare is the most appropriate for the individual patient. Since characteristics and complaints of patients within a diagnosis group may differ, predefined patient clusters could provide substantive and efficient support for professionals in the conversation about aftercare. By using advanced data analysis methods, clusters of patients who are different from one another within a diagnosis group can be identified.
This study had a 2-fold objective: (1) to identify, visualize, and describe potential patient clusters within the colorectal and prostate cancer population and (2) to explore the potential usability of these clusters in clinical practice.
First, we used cross-sectional data from patients with colorectal cancer and patients with prostate cancer provided by the population-based PROFILES (Patient-Reported Outcomes Following Initial Treatment and Long-Term Evaluation of Survivorship) registry, which were originally collected between 2008 and 2012. To identify and visualize different clusters among the 2 patient populations, we conducted cluster analyses by applying the K-means algorithm and multiple-factor analyses. Second, in a qualitative study, we presented the patient clusters to patients with prostate, patients with colorectal cancer, and oncology professionals. To assess the usability of these clusters, we held expert panel group interviews. The interviews were video recorded and transcribed. Three researchers independently performed content-directed data analyses to understand and describe the qualitative data. Quotes illustrate the most important results.
We identified 3 patient clusters among colorectal cancer cases (n=3989) and 5 patient clusters among prostate cancer cases (n=696), which were described in tabular form. Patient experts (6/8, 75%) and professional experts (17/20, 85%) recognized the patient clustering based on distinguishing variables. However, the tabular form was evaluated as less applicable in clinical practice. Instead, the experts suggested the development of a conversation tool (eg, decision tree) to guide professionals through the hierarchy of variables. In addition, participants suggested that information about possible aftercare initiatives should be offered and integrated. This would also ensure a good overview and seemed to be a precondition for finding suitable aftercare.
This study demonstrates that a fully data-driven approach can be used to identify distinguishable and recognizable (ie, in routine care) patient clusters in large data sets within cancer populations. Patient clusters can be a source of support for health professionals in the aftercare conversation. These clusters, when integrated into a smart digital conversation and referral tool, might be an opportunity to improve referral to cancer aftercare.
Netherlands Trial Register NL9226; https://trialsearch.who.int/Trial2.aspx?TrialID=NL9226.
预计在未来几年,结直肠癌和前列腺癌幸存者及患者数量将稳步增加。由于原发性癌症治疗,患者出现了许多其他不适,这增加了癌症康复护理的需求。然而,尽管有广泛的康复护理选择,但转介到合适的癌症康复护理服务的情况仍然不足。护理人员和患者通常不知道哪种康复护理最适合个体患者。由于诊断组内患者的特征和不适可能不同,预定义的患者集群可为专业人员在康复护理讨论中提供实质性和有效的支持。通过使用先进的数据分析方法,可以识别诊断组内彼此不同的患者集群。
本研究有两个目标:(1)识别、可视化并描述结直肠癌和前列腺癌患者群体中的潜在患者集群;(2)探索这些集群在临床实践中的潜在可用性。
首先,我们使用了基于人群的PROFILES(初始治疗后患者报告的结果和幸存者长期评估)登记处提供的结直肠癌患者和前列腺癌患者的横断面数据,这些数据最初收集于2008年至2012年之间。为了识别和可视化这两个患者群体中的不同集群,我们应用K均值算法和多因素分析进行了聚类分析。其次,在一项定性研究中,我们向前列腺癌患者、结直肠癌患者和肿瘤学专业人员展示了患者集群。为了评估这些集群的可用性,我们进行了专家小组访谈。访谈进行了视频录制和转录。三名研究人员独立进行了内容导向的数据分析,以理解和描述定性数据。引用内容说明了最重要的结果。
我们在3989例结直肠癌病例中识别出3个患者集群,在696例前列腺癌病例中识别出5个患者集群,并以表格形式进行了描述。患者专家(6/8,75%)和专业专家(17/20,85%)基于区分变量识别出了患者聚类。然而,表格形式在临床实践中的适用性被评估为较低。相反,专家们建议开发一种对话工具(如决策树),以指导专业人员了解变量层次结构。此外,参与者建议应提供并整合有关可能的康复护理举措的信息。这也将确保有一个清晰的概述,并且似乎是找到合适康复护理的前提条件。
本研究表明,一种完全数据驱动的方法可用于在癌症人群的大数据集中识别可区分和可识别的(即在常规护理中)患者集群。患者集群可以为健康专业人员在康复护理讨论中提供支持。当这些集群集成到智能数字对话和转介工具中时,可能是改善癌症康复护理转介的一个机会。
荷兰试验注册NL9226;https://trialsearch.who.int/Trial2.aspx?TrialID=NL9226 。