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Identification of Individuals With Hereditary Cancer Risk Through Multiple Data Sources: A Population-Based Method Using the GARDE Platform and The Utah Population Database. 通过多种数据源识别具有遗传性癌症风险的个体:使用 GARDE 平台和犹他州人口数据库的人口方法。
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-11-01 Epub Date: 2024-11-21 DOI: 10.1200/CCI-24-00142
Guilherme Del Fiol, Michael J Madsen, Richard L Bradshaw, Michael G Newman, Kimberly A Kaphingst, Sean V Tavtigian, Nicola J Camp

Purpose: The GARDE platform uses family history reported in the electronic health record (EHR) to systematically identify eligible patients for genetic testing for hereditary cancer syndromes. The goal of this study was to evaluate the change in effectiveness of GARDE to identify eligible individuals when more comprehensive family history data are provided, thus quantifying the impact of underdocumentation.

Methods: A cohort of 133,764 patients at the University of Utah Health was analyzed with GARDE comparing identification rates using EHR data versus EHR plus data from a statewide population database, the Utah Population Database (UPDB).

Results: Compared with EHR alone, EHR + UPDB increased the rate of individuals eligible for genetic testing from 4.1% to 9.2%. In the 44,692 individuals with the most comprehensive family history, eligibility more than quadrupled from 4.6% (EHR alone) to 19.3% (EHR + UPDB). The increase was significant across all demographics, but disparities still remained for historically marginalized minorities (9.2%-13.9% in non-White races compared with 19.7% in White races).

Conclusion: Augmenting EHR data with family history data from the UPDB substantially improved the detection of individuals eligible for genetic testing of hereditary cancer syndromes in all subgroups. This underscores the importance of improving methods for acquiring family history, in person or in silico. However, these increases did not ameliorate disparities. Continuous disparities are unlikely to be explained by incomplete family history alone and may also be because susceptibility genes, risk variants, and screening guidelines were discovered and developed largely in White races. Addressing disparities will require intentional data collection of family history in historically marginalized minorities and the promotion of genetic and risk assessment studies in more diverse populations to ensure equity and health care.

目的:GARDE 平台利用电子病历 (EHR) 中报告的家族史系统地识别符合遗传性癌症综合征基因检测条件的患者。本研究的目的是评估当提供更全面的家族史数据时,GARDE 识别合格个体的有效性的变化,从而量化记录不足的影响:方法: 使用 GARDE 分析了犹他大学健康中心的 133764 名患者队列,比较了使用电子病历数据和电子病历加上来自全州人口数据库(犹他人口数据库,UPDB)的数据的识别率:结果:与仅使用电子病历相比,电子病历+UPDB 使符合基因检测条件的患者比例从 4.1% 提高到 9.2%。在具有最全面家族史的 44,692 人中,符合基因检测条件的人数增加了四倍多,从 4.6%(仅 EHR)增至 19.3%(EHR + UPDB)。在所有人口统计数据中,这一比例都有显著提高,但历史上被边缘化的少数族裔仍存在差距(非白人种族为 9.2%-13.9%,而白人种族为 19.7%):结论:用UPDB的家族史数据增强电子病历数据大大提高了对所有亚群中符合遗传性癌症综合征基因检测条件的个体的检测率。这凸显了改进获取家族史方法的重要性,无论是亲自获取还是在硅学中获取。然而,这些增加并没有改善差异。持续的差异不太可能仅由不完整的家族史来解释,也可能是因为易感基因、风险变异和筛查指南主要是在白人种族中发现和制定的。要解决差异问题,就需要有意识地收集历史上被边缘化的少数民族的家族史数据,并在更多不同的人群中推广遗传和风险评估研究,以确保公平和医疗保健。
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引用次数: 0
Remote Patient Monitoring Using Mobile Health Technology in Cancer Care and Research: Patients' Views and Preferences. 在癌症护理和研究中使用移动医疗技术对患者进行远程监控:患者的观点和偏好。
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-11-01 Epub Date: 2024-11-12 DOI: 10.1200/CCI.24.00092
Dominique G Stuijt, Eva E M van Doeveren, Milan Kos, Marijn Eversdijk, Jacobus J Bosch, Adriaan D Bins, Marieke A R Bak, Martijn G H van Oijen

Purpose: There is an increasing interest in studying the potential of mobile health (mHealth) technologies, such as smartphone apps and wearables, as monitoring tools for patients with cancer during or after their treatment. However, little research is dedicated to exploring the opinions and concerns of patients regarding the adoption of these technologies. This study aimed to gain insight into patients' perspectives and preferences for participating in mHealth-based monitoring in cancer care.

Methods: A qualitative study comprising semistructured interviews was conducted in the Netherlands between April and June 2023. Participants were eligible if they were 18 years or older with a current or past diagnosis of cancer. The interview guide was developed on the basis of the technology acceptance model, with main themes being use, communication, trust, privacy, and expectations.

Results: Thirteen participants with urologic primary cancer were interviewed. Most patients had already some familiarity with the use of digital monitoring devices or wearables. Main barriers included persistent reminders of the illness, receiving notifications deemed unnecessary or unwanted, and the acknowledgment that mHealth technology does not serve as a substitute for human doctors. Conversely, patients recognized the potential for time-savings through the utilization of mHealth, viewed active monitoring as nonburdensome, considered mHealth a tool for reducing the communication threshold with their doctor, and expressed willingness to adopt such a platform if they perceived personal or societal relevance.

Conclusion: This study has elucidated which factors are important for successful development of mHealth for patients with cancer. While both barriers and facilitators play a role, patients' attitudes were positive toward the implementation of remote digital monitoring, showing promising prospects for future research of mHealth in oncology.

目的:人们对研究移动医疗(mHealth)技术(如智能手机应用程序和可穿戴设备)作为癌症患者治疗期间或治疗后的监测工具的潜力越来越感兴趣。然而,很少有研究专门探讨患者对采用这些技术的意见和担忧。本研究旨在深入了解患者对参与基于移动医疗的癌症护理监测的看法和偏好:2023 年 4 月至 6 月期间,在荷兰进行了一项定性研究,包括半结构式访谈。年满 18 周岁且目前或过去曾被诊断患有癌症的患者均有资格参与。访谈指南是在技术接受模型的基础上制定的,主要主题包括使用、沟通、信任、隐私和期望:13 名泌尿系统原发性癌症患者接受了访谈。大多数患者对数字监测设备或可穿戴设备的使用已有一定了解。主要障碍包括持续提醒病情、接收不必要或不想要的通知,以及认识到移动医疗技术不能替代人类医生。相反,患者认识到了利用移动医疗节省时间的潜力,认为主动监测不会造成负担,认为移动医疗是降低与医生沟通门槛的工具,并表示如果他们认为与个人或社会相关,他们愿意采用这样的平台:本研究阐明了哪些因素对癌症患者移动医疗的成功发展至关重要。虽然障碍和促进因素都起着作用,但患者对实施远程数字监测的态度是积极的,这为移动医疗在肿瘤学领域的未来研究展示了广阔的前景。
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引用次数: 0
Can Digital Health Improve Therapeutic Compliance in Oncology? 数字医疗能提高肿瘤治疗的依从性吗?
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-10-01 Epub Date: 2024-10-25 DOI: 10.1200/CCI-24-00205
Pierre Etienne Heudel, Myriam Ait Ichou, Bertrand Favier, Hugo Crochet, Jean-Yves Blay

Purpose: Therapeutic compliance, or adherence, is critical in oncology because of the complexity and duration of cancer treatment regimens. Nonadherence can lead to suboptimal therapeutic outcomes, increased disease progression, higher mortality rates, and elevated health care costs. Traditional methods to enhance compliance, such as patient education and regular follow-ups, have shown limited success.

Materials and methods: This review examines the potential of digital health technologies to improve adherence in oncology. Various studies and trials are analyzed to assess the effectiveness of these technologies in supporting patients with cancer.

Results: mHealth applications have been shown to improve medication adherence through features like medication reminders and symptom tracking. Telemedicine facilitates continuous care and reduces the need for travel, significantly improving adherence and patient satisfaction. Patient-reported outcome measures enhance clinical decision making and personalized treatment plans by incorporating patient feedback. Electronic medical records and patient portals improve compliance by providing easy access to medical information and fostering better patient-provider communication. Connected pillboxes aid in consistent medication intake and reduce dispensing errors.

Conclusion: Digital health technologies offer significant benefits in oncology by enhancing patient engagement, improving adherence to treatment protocols, and enabling comprehensive cancer care management. However, challenges such as the digital divide, data privacy concerns, and the need for tailored interventions must be addressed. Future research should focus on evaluating the effectiveness of digital interventions and developing personalized digital health tools to maximize therapeutic compliance.

目的:由于癌症治疗方案的复杂性和持续时间,治疗依从性(或称依从性)在肿瘤学中至关重要。不坚持治疗会导致治疗效果不理想、疾病进展加剧、死亡率升高以及医疗费用增加。提高依从性的传统方法,如患者教育和定期随访,成效有限:本综述探讨了数字医疗技术在提高肿瘤治疗依从性方面的潜力。结果表明:移动医疗应用通过用药提醒和症状跟踪等功能提高了患者的用药依从性。远程医疗为持续护理提供了便利,减少了出差的需要,大大提高了患者的依从性和满意度。病人报告的结果测量通过纳入病人的反馈意见,加强了临床决策和个性化治疗计划。电子病历和患者门户网站通过提供便捷的医疗信息获取途径和促进患者与医护人员之间更好的沟通,提高了患者的依从性。联网药盒有助于保持药物摄入的一致性并减少配药错误:数字医疗技术通过提高患者参与度、改善治疗方案的依从性以及实现全面的癌症护理管理,为肿瘤学带来了巨大的益处。然而,数字鸿沟、数据隐私问题以及定制干预措施的必要性等挑战必须得到解决。未来的研究应侧重于评估数字干预措施的有效性和开发个性化数字健康工具,以最大限度地提高治疗依从性。
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引用次数: 0
Informatics and Artificial Intelligence-Guided Assessment of the Regulatory and Translational Research Landscape of First-in-Class Oncology Drugs in the United States, 2018-2022. 2018-2022年信息学和人工智能指导下的美国一流肿瘤药物监管和转化研究前景评估》(Informatics and Artificial Intelligence-Guided Assessment of the Regulatory and Translational Research Landscape of First-in-Class Oncology Drugs in the United States, 2018-2022)。
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-10-01 DOI: 10.1200/CCI.24.00087
Jay G Ronquillo, Brett South, Prakash Naik, Rominder Singh, Magdia De Jesus, Stephen J Watt, Aida Habtezion

Purpose: Cancer drug development remains a critical but challenging process that affects millions of patients and their families. Using biomedical informatics and artificial intelligence (AI) approaches, we assessed the regulatory and translational research landscape defining successful first-in-class drugs for patients with cancer.

Methods: This is a retrospective observational study of all novel first-in-class drugs approved by the US Food and Drug Administration (FDA) from 2018 to 2022, stratified by cancer versus noncancer drugs. A biomedical informatics pipeline leveraging interoperability standards and ChatGPT performed integration and analysis of public databases provided by the FDA, National Institutes of Health, and WHO.

Results: Between 2018 and 2022, the FDA approved a total of 247 novel drugs, of which 107 (43.3%) were first-in-class drugs involving a new biologic target. Of these first-in-class drugs, 30 (28%) treatments were indicated for patients with cancer, including 19 (63.3%) for solid tumors and the remaining 11 (36.7%) for hematologic cancers. A median of 68 publications of basic, clinical, and other relevant translational science preceded successful FDA approval of first-in-class cancer drugs, with oncology-related treatments involving fewer median years of target-based research than therapies not related to cancer (33 v 43 years; P < .05). Overall, 94.4% of first-in-class drugs had at least 25 years of target-related research papers, while 85.5% of first-in-class drugs had at least 10 years of translational research publications.

Conclusion: Novel first-in-class cancer treatments are defined by diverse clinical indications, personalized molecular targets, dependence on expedited regulatory pathways, and translational research metrics reflecting this complex landscape. Biomedical informatics and AI provide scalable, data-driven ways to assess and even address important challenges in the drug development pipeline.

目的:癌症药物开发仍然是一个关键但极具挑战性的过程,影响着数百万患者及其家庭。利用生物医学信息学和人工智能(AI)方法,我们评估了为癌症患者成功定义首创药物的监管和转化研究情况:这是一项回顾性观察研究,研究对象是美国食品和药物管理局(FDA)从 2018 年到 2022 年批准的所有新型首创药物,并按癌症药物与非癌症药物进行了分层。生物医学信息学管道利用互操作性标准和 ChatGPT 对 FDA、美国国立卫生研究院和世卫组织提供的公共数据库进行了整合和分析:2018 年至 2022 年间,FDA 共批准了 247 种新型药物,其中 107 种(43.3%)是涉及新生物靶点的首创药物。在这些首创药物中,有30种(28%)治疗方法适用于癌症患者,其中19种(63.3%)适用于实体瘤,其余11种(36.7%)适用于血液肿瘤。在FDA成功批准一类抗癌药物之前,基础、临床和其他相关转化科学的中位数论文发表量为68篇,与癌症无关的疗法相比,肿瘤相关疗法的靶向研究中位数年数较少(33年v 43年;P < .05)。总体而言,94.4%的一类新药至少发表了25年的靶点相关研究论文,而85.5%的一类新药至少发表了10年的转化研究论文:结论:新的一流癌症治疗方法由多样化的临床适应症、个性化的分子靶点、对快速监管途径的依赖以及反映这一复杂情况的转化研究指标所定义。生物医学信息学和人工智能提供了可扩展、数据驱动的方法来评估甚至解决药物开发管道中的重要挑战。
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引用次数: 0
Drug's Journey of a Thousand Papers Begins With a Single Step. 药物的千纸之旅始于足下。
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-10-01 Epub Date: 2024-10-14 DOI: 10.1200/CCI-24-00225
Pasquale F Innominato, Nicholas I Wreglesworth, Alessio Antonini, Zachary S Buchwald
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引用次数: 0
Development and Portability of a Text Mining Algorithm for Capturing Disease Progression in Electronic Health Records of Patients With Stage IV Non-Small Cell Lung Cancer. 在 IV 期非小细胞肺癌患者电子健康记录中捕捉疾病进展的文本挖掘算法的开发与可移植性。
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-10-01 Epub Date: 2024-10-04 DOI: 10.1200/CCI.24.00053
M V Verschueren, H Abedian Kalkhoran, M Deenen, B E E M van den Borne, J Zwaveling, L E Visser, L T Bloem, B J M Peters, E M W van de Garde

Purpose: The objective was to develop and evaluate the portability of a text mining algorithm for prospectively capturing disease progression in electronic health record (EHR) data of patients with metastatic non-small cell lung cancer (mNSCLC) treated with immunochemotherapy.

Methods: This study used EHR data from patients with mNSCLC receiving immunochemotherapy (between October 1, 2018, and December 31, 2022) in four Dutch hospitals. A text mining algorithm for capturing disease progression was developed in hospitals 1 and 2 and then transferred to hospitals 3 and 4 to evaluate portability. Performance metrics were calculated by comparing its outcomes with manual chart review. In addition, data were simulated to come available over time to assess performance in real-time applications. Median progression-free survival (PFS) was calculated using the Kaplan-Meier method to compare text mining with manual chart review.

Results: During development and portability, the text mining algorithm performed well in capturing disease progression, with all performance scores >90%. When real-time performance was simulated, the performance scores in all four hospitals exceeded 90% from week 15 after the start of follow-up. Although the exact progression dates varied in 46 patients of 157 patients with progressive disease, the number of patients labeled with progression too early (n = 24) and too late (n = 22) was well balanced with discrepancies ranging from -116 to 384 days. Nevertheless, the PFS curves constructed with text mining and manual chart review were highly similar for each hospital.

Conclusion: In this study, an accurate text mining algorithm for capturing disease progression in the EHR data of patients with mNSCLC was developed. The algorithm was portable across different hospitals, and the performance over time was good, making this an interesting approach for prospective follow-up of multicenter cohorts.

目的:本研究旨在开发和评估一种文本挖掘算法的可移植性,以前瞻性地捕捉接受免疫化疗的转移性非小细胞肺癌(mNSCLC)患者电子健康记录(EHR)数据中的疾病进展情况:本研究使用了四家荷兰医院接受免疫化疗的mNSCLC患者的电子病历数据(2018年10月1日至2022年12月31日期间)。在1号和2号医院开发了一种用于捕捉疾病进展的文本挖掘算法,然后将其转移到3号和4号医院,以评估其可移植性。通过将其结果与人工病历审查进行比较,计算出性能指标。此外,还模拟了数据随时间推移的可用性,以评估实时应用的性能。使用 Kaplan-Meier 法计算无进展生存期(PFS)中位数,以比较文本挖掘与人工病历审查的结果:结果:在开发和移植过程中,文本挖掘算法在捕捉疾病进展方面表现良好,所有性能得分均大于 90%。在模拟实时性能时,从随访开始后的第 15 周起,所有四家医院的性能得分都超过了 90%。虽然在 157 例疾病进展患者中,有 46 例患者的确切进展日期不尽相同,但标记为进展过早(24 例)和过晚(22 例)的患者数量非常均衡,差异范围从-116 天到 384 天不等。尽管如此,每家医院通过文本挖掘和人工病历审查构建的 PFS 曲线高度相似:本研究开发了一种准确的文本挖掘算法,用于捕捉 mNSCLC 患者电子病历数据中的疾病进展情况。该算法可在不同医院间移植,且随时间推移性能良好,因此是一种用于多中心队列前瞻性随访的有趣方法。
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引用次数: 0
Exploring Long-Term Determinants and Attitudes Toward Smartphone-Based Commercial Health Care Applications Among Patients With Cancer. 探索癌症患者对基于智能手机的商业医疗保健应用的长期决定因素和态度。
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-10-01 Epub Date: 2024-10-16 DOI: 10.1200/CCI.23.00242
Yae Won Tak, Ye-Eun Park, Seunghee Baek, Jong Won Lee, Seockhoon Chung, Yura Lee

Purpose: Our study explores how attitudes of patients with cancer toward smartphone-based commercial health care apps affect their use and identifies the influencing factors.

Materials and methods: Of the 960 patients with cancer who participated in a randomized controlled trial for a smartphone-based commercial health care app, only 264 participants, who completed a survey on app usage experiences conducted between May and August 2022, were included in this study. Participants were categorized into three groups: Positive Persistence (PP), Negative Nonpersistence (NN), and Neutral (NE) on the basis of their attitude and willingness to use smartphone-based commercial health care apps. The Health-Related Quality of Life (QOL) Instrument (8 Items), European QOL (5 Dimensions; 5 Levels), The Human Interaction and Motivation questionnaire, and open-ended questionnaires were used to examine factors potentially influencing extended utilization of digital interventions.

Results: Despite demographic similarities among the three groups, only the PP and NE groups showed similar app usage compared with the NN group. The combined group (positive persistence and neutral) exhibited significant improvement in depression (P = .02), anxiety (P = .03), and visual analog scale scores (P = .02) compared with the NN group. In addition, patient interaction (P < .01) and the presence of a chatbot/information feature on the app (P < .01) demonstrated a significant difference across the three groups, with the most favorable response observed among the PP group. Patients were primarily motivated to use the app owing to its health management functions, while the personal challenges they encountered during app usage acted as deterrents.

Conclusion: These findings suggest that maintaining a non-negative attitude toward smartphone-based commercial health care apps could lead to an improvement in psychological distress. In addition, the social aspect of apps could contribute to extending patient's utilization of digital interventions.

目的:我们的研究探讨了癌症患者对基于智能手机的商业医疗保健应用程序的态度如何影响其使用,并确定了影响因素:960名癌症患者参与了基于智能手机的商业医疗保健应用程序的随机对照试验,其中只有264名参与者完成了2022年5月至8月期间进行的应用程序使用体验调查,他们被纳入了本研究。参与者被分为三组:根据他们使用基于智能手机的商业医疗应用程序的态度和意愿,将参与者分为三组:积极坚持组(PP)、消极不坚持组(NN)和中立组(NE)。使用与健康相关的生活质量(QOL)工具(8 个项目)、欧洲 QOL(5 个维度;5 个等级)、人际交往和动机问卷以及开放式问卷来研究可能影响延长使用数字干预措施的因素:尽管三组患者的人口统计学特征相似,但只有 PP 组和 NE 组与 NN 组相比显示出相似的应用程序使用率。与 NN 组相比,联合组(积极坚持组和中性组)在抑郁(P = .02)、焦虑(P = .03)和视觉模拟量表评分(P = .02)方面均有显著改善。此外,患者互动(P < .01)和应用程序中聊天机器人/信息功能的存在(P < .01)在三组中也有显著差异,其中 PP 组的反应最为积极。患者使用该应用程序的主要动机是其健康管理功能,而他们在使用过程中遇到的个人挑战则成为了阻碍因素:这些研究结果表明,对基于智能手机的商业医疗保健应用程序保持非负面的态度可改善心理困扰。此外,应用程序的社交功能也有助于提高患者对数字干预措施的利用率。
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引用次数: 0
Acknowledgment of Reviewers 2024. 感谢审稿人 2024.
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-09-01 DOI: 10.1200/CCI-24-00209
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引用次数: 0
Machine Learning-Driven Phenogrouping and Cardiorespiratory Fitness Response in Metastatic Breast Cancer. 机器学习驱动的表型分组与转移性乳腺癌的心肺功能反应
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-09-01 DOI: 10.1200/CCI.24.00031
Robert T Novo, Samantha M Thomas, Michel G Khouri, Fawaz Alenezi, James E Herndon, Meghan Michalski, Kereshmeh Collins, Tormod Nilsen, Elisabeth Edvardsen, Lee W Jones, Jessica M Scott

Purpose: The magnitude of cardiorespiratory fitness (CRF) impairment during anticancer treatment and CRF response to aerobic exercise training (AT) are highly variable. The aim of this ancillary analysis was to leverage machine learning approaches to identify patients at high risk of impaired CRF and poor CRF response to AT.

Methods: We evaluated heterogeneity in CRF among 64 women with metastatic breast cancer randomly assigned to 12 weeks of highly structured AT (n = 33) or control (n = 31). Unsupervised hierarchical cluster analyses were used to identify representative variables from multidimensional prerandomization (baseline) data, and to categorize patients into mutually exclusive subgroups (ie, phenogroups). Logistic and linear regression evaluated the association between phenogroups and impaired CRF (ie, ≤16 mL O2·kg-1·min-1) and CRF response.

Results: Baseline CRF ranged from 10.2 to 38.8 mL O2·kg-1·min-1; CRF response ranged from -15.7 to 4.1 mL O2·kg-1·min-1. Of the n = 120 candidate baseline variables, n = 32 representative variables were identified. Patients were categorized into two phenogroups. Compared with phenogroup 1 (n = 27), phenogroup 2 (n = 37) contained a higher number of patients with none or >three lines of previous anticancer therapy for metastatic disease and had lower resting left ventricular systolic and diastolic function, cardiac output reserve, hematocrit, lymphocyte count, patient-reported outcomes, and CRF (P < .05) at baseline. Among patients allocated to AT (phenogroup 1, n = 12; 44%; phenogroup 2, n = 21; 57%), CRF response (-1.94 ± 3.80 mL O2·kg-1·min-1 v 0.70 ± 2.22 mL O2·kg-1·min-1) was blunted in phenogroup 2 compared with phenogroup 1.

Conclusion: Phenotypic clustering identified two subgroups with unique baseline characteristics and CRF outcomes. The identification of CRF phenogroups could help improve cardiovascular risk stratification and guide investigation of targeted exercise interventions among patients with cancer.

目的:抗癌治疗期间心肺功能(CRF)受损的程度以及CRF对有氧运动训练(AT)的反应存在很大差异。本辅助分析的目的是利用机器学习方法来识别CRF受损和CRF对有氧运动训练反应不佳的高风险患者:我们评估了 64 名转移性乳腺癌女性患者 CRF 的异质性,她们被随机分配到为期 12 周的高度结构化 AT(33 人)或对照组(31 人)。我们使用无监督分层聚类分析从随机化前(基线)的多维数据中识别出代表性变量,并将患者分为相互排斥的亚组(即表型组)。逻辑回归和线性回归评估了表型组与受损的CRF(即≤16 mL O2-kg-1-min-1)和CRF反应之间的关联:基线 CRF 为 10.2 至 38.8 mL O2-kg-1-min-1;CRF 反应为 -15.7 至 4.1 mL O2-kg-1-min-1。在 n = 120 个候选基线变量中,确定了 n = 32 个代表性变量。患者被分为两个表型组。与表型组 1(n = 27)相比,表型组 2(n = 37)中既往未接受过转移性疾病抗癌治疗或抗癌治疗次数大于 3 次的患者人数较多,且基线时静息左心室收缩和舒张功能、心输出量储备、血细胞比容、淋巴细胞计数、患者报告结果和 CRF 均较低(P < .05)。在分配到 AT 的患者中(表型组 1,n = 12;44%;表型组 2,n = 21;57%),与表型组 1 相比,表型组 2 的 CRF 反应(-1.94 ± 3.80 mL O2-kg-1-min-1 v 0.70 ± 2.22 mL O2-kg-1-min-1 )减弱:表型聚类确定了两个具有独特基线特征和 CRF 结果的亚组。确定 CRF 表型组有助于改善心血管风险分层,并指导对癌症患者进行有针对性的运动干预研究。
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引用次数: 0
Automated, Real-Time Integration of Biometric Data From Wearable Devices With Electronic Medical Records: A Feasibility Study. 将可穿戴设备的生物识别数据与电子病历进行自动、实时整合:可行性研究
IF 3.3 Q2 ONCOLOGY Pub Date : 2024-09-01 Epub Date: 2024-09-30 DOI: 10.1200/CCI.24.00040
Julius K Weng, Ritupreet Virk, Kels Kaiser, Karen E Hoffman, Chelain R Goodman, Melissa Mitchell, Simona Shaitelman, Pamela Schlembach, Valerie Reed, Chi-Fang Wu, Lianchun Xiao, Grace L Smith, Benjamin D Smith

Purpose: A major barrier to the incorporation of biometric data into clinical practice is the lack of device integration with electronic medical records (EMRs). We developed infrastructure to transmit biometric data from an Apple Watch into the EMR for physician review. The study objective was to test feasibility of using this infrastructure for patients undergoing radiotherapy.

Methods: The study included patients with breast or prostate cancer receiving ≥3 weeks of radiotherapy who reported owning an Apple Watch. Daily resting heart rate (HR), HR variability, step count, and exercise minutes were automatically transferred to our EMR using a custom app installed on each patient's iPhone. Biometric data were presented to the treating radiation oncologist for review on a weekly basis during creation of the on-treatment note. Feasibility was defined a priori as physician review of biometric data for at least 90% of patients. Time trends in biometric data were tested using the Jonckheere-Terpstra test. Patient satisfaction was assessed using the System Usability Scale (SUS), with scores above 80 considered above-average user experience.

Results: Of the 20 patients enrolled, biometric data were successfully transmitted to the EMR and reviewed by the radiation oncologist for 95% (n = 19) of patients, thus meeting the a priori feasibility threshold. For patients with radiation courses ≥4 weeks, exercise minutes decreased over time (P = .01) and daily mean HR variability increased over time (P = .02). The median SUS was 82.5 (IQR, 70-87.5).

Conclusion: Our study demonstrates the feasibility of real-time integration of biometric data collected from an Apple Watch into the EMR with subsequent physician review. The high rates of physician review and patient satisfaction provide support for further development of large-scale collection of wearable device data.

目的:将生物识别数据纳入临床实践的一个主要障碍是设备与电子病历(EMR)缺乏集成。我们开发了将 Apple Watch 上的生物识别数据传输到 EMR 供医生审查的基础设施。研究目的是测试在接受放疗的患者中使用该基础设施的可行性:研究对象包括接受放疗时间≥3 周且报告拥有 Apple Watch 的乳腺癌或前列腺癌患者。使用安装在每位患者 iPhone 上的定制应用程序,每日静息心率 (HR)、心率变异性、步数和运动分钟数自动传输到我们的 EMR。生物计量数据每周在创建治疗记录时提交给放射肿瘤主治医师审核。可行性的先验定义是,至少有 90% 的患者的生物测定数据得到了医生的审核。生物测量数据的时间趋势使用 Jonckheere-Terpstra 检验进行测试。患者满意度采用系统可用性量表(SUS)进行评估,80 分以上视为用户体验高于平均水平:在登记的 20 名患者中,95%(n = 19)的患者的生物计量数据已成功传输到 EMR 并由放射肿瘤专家进行了审查,因此达到了先验可行性阈值。对于放射疗程≥4 周的患者,运动分钟数随时间推移而减少(P = .01),日平均心率变异性随时间推移而增加(P = .02)。中位 SUS 为 82.5(IQR,70-87.5):我们的研究证明了将从 Apple Watch 收集到的生物识别数据实时整合到 EMR 并由医生进行后续审查的可行性。医生审核率和患者满意度都很高,这为进一步发展大规模收集可穿戴设备数据提供了支持。
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JCO Clinical Cancer Informatics
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