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Assessing the accuracy of survival machine learning and traditional statistical models for Alzheimer's disease prediction over time: a study on the ADNI cohort. 随着时间的推移评估阿尔茨海默病预测的生存机器学习和传统统计模型的准确性:一项关于ADNI队列的研究
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-11-05 DOI: 10.1186/s12874-025-02689-w
Sardar Jahani, Ghodratollah Roshanaei, Leili Tapak

Background: Mild cognitive impairment (MCI) represents a transitional stage to Alzheimer's disease (AD), making progression prediction crucial for timely intervention. Predictive models integrating clinical, laboratory, and survival data can enhance early diagnosis and treatment decisions. While machine learning approaches effectively handle censored data, their application in MCI-to-AD progression prediction remains limited, with unclear superiority over classical survival models.

Methods: We analyzed 902 MCI individuals from Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset with 61 baseline features. Traditional survival models (Cox proportional hazards, Weibull, elastic net Cox) were compared with machine learning techniques (gradient boosting survival, random survival forests [RSF]) for progression prediction. Models were evaluated using C-index and IBS.

Results: Following feature selection, 14 key features were retained for model training. RSF achieved superior predictive performance with the highest C-index (0.878, 95% CI: 0.877-0.879) and lowest IBS (0.115, 95% CI: 0.114-0.116), demonstrating statistically significant superiority over all evaluated models (P-value < 0.001). RSF demonstrated effective risk stratification across individual biomarker categories (genetic, imaging, cognitive) and achieved optimal patient separation into three distinct prognostic groups when combining all features (p < 0.0001). SHAP-based feature importance analysis of RSF revealed cognitive assessments as the most influential predictors, with Functional Activities Questionnaire (FAQ) achieving the highest importance score (1.098), followed by Logical Memory Delayed Recall Total (LDELTOTAL) (0.906) and Alzheimer's Disease Assessment Scale (ADAS13) (0.770). Among neuroimaging biomarkers, Fluorodeoxyglucose (FDG) emerged as the leading predictor (0.634), ranking fifth overall. Feature importance ranking differed between classical and machine learning approaches, with FDG maintaining consistent importance across all models. RSF demonstrated excellent predictive calibration with positive net benefit across risk thresholds from 0.2 to 0.8.

Conclusions: The RSF model outperformed other methods, demonstrating superior potential for improving prognostic accuracy in medical diagnostics for MCI to AD progression.

背景:轻度认知障碍(MCI)是阿尔茨海默病(AD)的过渡阶段,因此预测进展对及时干预至关重要。整合临床、实验室和生存数据的预测模型可以增强早期诊断和治疗决策。虽然机器学习方法可以有效地处理经过审查的数据,但它们在mci到ad进展预测中的应用仍然有限,与经典生存模型相比,其优势尚不明确。方法:我们分析了902名来自阿尔茨海默病神经影像学倡议(ADNI)数据集的MCI患者,这些患者具有61个基线特征。将传统的生存模型(Cox比例风险、威布尔、弹性网Cox)与机器学习技术(梯度增强生存、随机生存森林[RSF])进行进展预测比较。采用c指数和IBS对模型进行评价。结果:特征选择后,保留了14个关键特征用于模型训练。RSF的c指数最高(0.878,95% CI: 0.877-0.879), IBS最低(0.115,95% CI: 0.114-0.116),在所有评估模型中具有统计学上的显著优势(p值结论:RSF模型优于其他方法,在MCI到AD进展的医学诊断中显示出更高的预测准确性潜力。
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引用次数: 0
Current practice on covariate adjustment and stratified analysis -based on survey results by ASA oncology estimand working group conditional and marginal effect task force. 基于ASA肿瘤评估工作组条件和边际效应工作组调查结果的协变量调整和分层分析的现状。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-11-04 DOI: 10.1186/s12874-025-02670-7
Jiawei Wei, Sarwar I Mozumder, Liming Li, Dong Xi, Jiajun Xu, Ray Lin, Oleksandr Sverdlov, Jonathan J Chipman

Background: The 2023 FDA's guidance on covariate adjustment encourages the judicious use of baseline covariates to enhance efficiency. However, when performing covariate adjustment in non-linear models, care must be taken on preserving estimation of the target estimand as introduced by the ICH E9(R1) addendum. To understand the current practices of covariate adjustment within the context of the estimands framework across various sectors and associated challenges, the conditional and marginal effect task force within the ASA Oncology Estimand working group conducted a survey.

Methods: The target participants of the survey were biostatisticians who support study designs and analyses in clinical trials in the drug development industry or in academia. A total of 19 questions were included in an online survey that was distributed between June and July 2023. The survey was disseminated via a shared online link to contacts from more than 50 organisations. The survey response and experience from the working group on challenges of covariate adjustment and stratified analysis are summarized and discussed in detail.

Results: A total of 122 responses were received from 12 countries. The survey results suggest that there remain gaps in the understanding of different statistical analysis models which may target different estimands for non-collapsable measures, highlighting the need for further clarification and training on this topic. In terms of general practice, when performing the analysis under stratified randomization, additional covariates may be added in the analysis model beyond those used for stratifying randomization, and small strata may be pooled to avoid the estimation challenges.

Conclusions: This paper summarises the results from this survey and based on our findings, we provide some recommendations to establish consistency and clarifications on any widely misunderstood practices.

背景:2023年FDA关于协变量调整的指南鼓励明智地使用基线协变量以提高效率。然而,当在非线性模型中执行协变量调整时,必须注意保持ICH E9(R1)附录中介绍的目标估计的估计。为了了解在不同部门的评估框架背景下协变量调整的当前做法和相关挑战,ASA肿瘤评估工作组的条件和边际效应工作组进行了一项调查。方法:调查的目标参与者是在药物开发行业或学术界支持临床试验研究设计和分析的生物统计学家。这项在线调查在2023年6月至7月期间进行,共有19个问题。该调查通过一个共享的在线链接传播给了来自50多个组织的联系人。对协变量调整和分层分析挑战工作组的调查反应和经验进行了总结和详细讨论。结果:共收到来自12个国家的122份回复。调查结果表明,对不同统计分析模型的理解仍然存在差距,这些模型可能针对非可折叠措施的不同估计,突出表明需要进一步澄清和培训这一主题。就一般实践而言,在分层随机化下进行分析时,除了用于分层随机化的协变量之外,还可以在分析模型中添加额外的协变量,并且可以将小层合并以避免估计挑战。结论:本文总结了本次调查的结果,并根据我们的发现,我们提供了一些建议,以建立一致性和澄清任何广泛误解的做法。
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引用次数: 0
Enhancing confidence in complex health technology assessments by using real-world evidence: highlighting existing strategies for effective drug evaluation. 通过使用真实世界的证据增强对复杂卫生技术评估的信心:强调有效药物评价的现有战略。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-11-03 DOI: 10.1186/s12874-025-02683-2
Alison Antoine, Katia Desroziers, Julien Dupin, David Pérol, Rémy Choquet

Randomised controlled trials (RCTs) are the gold standard for evaluating new therapies but have limitations, notably in terms of external validity. Real-world data (RWD) studies could complement RCT evidence. However, a consensus has not yet been reached on situations where RWD could offer rigorous complementary evidence to an RCT when evaluating the effectiveness of therapeutic innovations. This research aims to: (1) propose a categorisation of complex clinical situations; (2) classify the real-world evidence (RWE) approaches to be used in each situation to help reduce uncertainties or provide further evidence in drug benefit assessments; (3) summarise the best methodological considerations to adopt when using these RWE approaches; and (4) propose general recommendations to increase confidence in the use of RWE approaches during the assessment process. The main recommendations within the framework around the RWD-generation plan for complex evaluations are related to four main issues: quality (establishing criteria and standards for quality data), methodology (ensuring the use of the best methodological approaches), transparency (from the industry and from the health technology agencies (HTAs) and sharing/collaborating across countries and HTAs (promoting collaboration between HTAs and involving all parties). Our proposal and recommendations could help the scientific community better consider the therapeutic value of innovations through RWD, so that their potential can be fully realised to benefit the quality of care and the regulation of the healthcare system.

随机对照试验(RCTs)是评估新疗法的黄金标准,但也有局限性,特别是在外部有效性方面。真实世界数据(RWD)研究可以补充随机对照试验的证据。然而,在评估治疗创新的有效性时,RWD是否可以为RCT提供严格的补充证据,目前尚未达成共识。本研究旨在:(1)提出复杂临床情况的分类;(2)对每种情况下使用的真实世界证据(RWE)方法进行分类,以帮助减少药物益处评估中的不确定性或提供进一步的证据;(3)总结使用这些RWE方法时应采用的最佳方法考虑因素;(4)提出一般性建议,以增加在评估过程中使用RWE方法的信心。围绕复杂评价的rwd生成计划框架内的主要建议涉及四个主要问题:质量(制定质量数据的标准和标准)、方法(确保使用最佳方法方法)、透明度(来自工业界和卫生技术机构)以及各国和卫生技术机构之间的共享/合作(促进卫生技术机构之间的合作并使所有各方参与)。我们的建议和建议可以帮助科学界更好地考虑通过RWD创新的治疗价值,从而充分发挥其潜力,从而提高护理质量和医疗保健系统的监管。
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引用次数: 0
Comparing in-person and remote consent of people with dementia into a primary care-based cluster randomised controlled trial: lessons from the Dementia PersonAlised Care Team (D-PACT) feasibility study. 将痴呆患者的现场同意和远程同意进行比较,以初级保健为基础的集群随机对照试验:来自痴呆个性化护理团队(D-PACT)可行性研究的经验教训。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-10-30 DOI: 10.1186/s12874-025-02685-0
T M Oh, S Batool, C Musicha, L Greene, H Wheat, L Smith, S Griffiths, A Gude, L Weston, H Shafi, K Stevens, C Sutcliffe, W Taylor, W Ingram, B Hussain, P Clarkson, I Sherriff, O C Ukoumunne, S Creanor, R Byng

Background: Complex socio-cultural, psychological, geographical, and service-related challenges are faced when recruiting people with dementia for clinical trials. The aim of Phase 1 of the Dementia PersonAlised Care Team (D-PACT) project was to assess the feasibility of recruiting (identifying, approaching and consenting) people with dementia, including those without capacity to consent, to a cluster randomized controlled trial of a primary care-based personalized dementia support intervention in England. COVID-19 necessitated a shift to remote working, creating the opportunity to compare recruitment strategies before and under lockdown constraints. This paper shares the adaptations made to enable remote consent and capacity judgement with people with dementia, as well as lessons learned.

Methods: Consent was conducted in person from September 2019 to March 2020. Remote consent was implemented from September 2020 to March 2021 after an enforced pause. Both quantitative and qualitative data were collected. Recruitment rates (proportion consented from eligible patients approached), mean monthly consent rates, and time spent on consent-related activities (tasks before and after consent/capacity-judgment meetings, miscellaneous tasks, travel) were compared. Participant experiences with remote recruitment were examined through thematic analysis of qualitative interviews.

Results: Pre-COVID-19, 22 participants (9.9%) out of 228 approached were consented in person. During the pandemic, 19 participants (9.6%) out of 198 were consented remotely, excluding 15 participants initially approached pre-pandemic and later consented via remote means. Mean monthly consent rates increased from 3.6 (in person) to 5.6 (remote). However, remote consent required more time (mean 14 researcher-hours per participant vs. 9 in person), with 75% of time spent on consent-related tasks compared to 20% in person. Travel accounted for 40% of in-person consent time. Interviews (n = 13) showed general acceptability of remote processes. However pre-consent information was perceived as excessive and led some participants to skim materials, potentially reducing understanding.

Conclusions: While remote consent is time-intensive, it achieves comparable rates (proportion consented/total approached) to in-person methods and higher monthly consent rates. A flexible, hybrid approach can enhance participation, offer choice, and increase person-centredness. Realistic planning for time and resources is crucial for inclusive dementia research. Funders should support these needs to ensure effective recruitment.

Trial registration: ISRCTN80204146.

背景:在招募痴呆症患者进行临床试验时,面临着复杂的社会文化、心理、地理和服务相关的挑战。痴呆症个性化护理团队(D-PACT)项目第一阶段的目的是评估招募(识别、接近和同意)痴呆症患者的可行性,包括那些没有能力同意的人,在英格兰进行基于初级保健的个性化痴呆症支持干预的随机对照试验。COVID-19需要转向远程工作,这为比较封锁之前和封锁限制下的招聘策略创造了机会。本文分享了为实现对痴呆症患者的远程同意和能力判断所做的调整,以及吸取的教训。方法:2019年9月至2020年3月,亲自同意。在强制暂停后,远程同意于2020年9月至2021年3月实施。收集了定量和定性数据。比较招募率(在接近的符合条件的患者中同意的比例)、平均每月同意率和在同意相关活动上花费的时间(同意/能力判断会议前后的任务、杂项任务、旅行)。通过定性访谈的专题分析,审查了远程招聘参与者的经验。结果:在covid -19之前,228名参与者中有22名(9.9%)获得了亲自同意。在大流行期间,198名参与者中有19名(9.6%)是远程同意的,不包括最初在大流行前接触,后来通过远程方式同意的15名参与者。平均每月同意率从3.6(亲自)增加到5.6(远程)。然而,远程同意需要更多的时间(平均每个参与者14个小时,而面对面的时间为9个小时),75%的时间花在同意相关的任务上,而面对面的时间为20%。旅行占了面对面同意时间的40%。访谈(n = 13)显示远程过程的普遍可接受性。然而,事先同意的信息被认为是过多的,导致一些参与者浏览材料,可能会减少理解。结论:尽管远程同意需要耗费大量时间,但与现场方法相比,远程同意率(同意比例/总接触人数)相当,而且每月同意率更高。灵活的混合方法可以增强参与,提供选择,并增加以人为本。时间和资源的现实规划对于包容性痴呆症研究至关重要。资助者应支持这些需要,以确保有效的征聘。试验注册:ISRCTN80204146。
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引用次数: 0
The importance of considering variability in re-expression of effect estimates for use in meta-analyses. 在meta分析中使用效应估计的重新表达中考虑可变性的重要性。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-10-30 DOI: 10.1186/s12874-025-02700-4
Leonid Kopylev, Michael Dzierlenga

Comparing and combining reports from different publication is of interest to many when conducting meta-analyses. However, challenges can arise with reports using transformations of the exposure data. A recent publication, Linakis et al. (BMC Med Res Methodol 24:6, 2024), compared methods for re-expression with the conclusion that the re-expression methods examined are not reliable. In their analysis, they treated the estimated effect estimates, which are random variables, as if they were constants, which have no inherent variability. This letter describes two places where this assumption was made and how it affected their conclusions. While the re-expression methods demonstrate potential room for refinement in terms of estimating the observed point estimate, with the statistically appropriate consideration of variability, use of re-expression for small to moderate sample sizes (up to approximately 5000) seems appropriate. That contrasts with the author's conclusion that use of re-expression methods is not suitable for meta-analyses.

在进行荟萃分析时,比较和合并来自不同出版物的报告是许多人感兴趣的。然而,使用公开数据转换的报告可能会出现问题。最近发表的一篇论文,Linakis等人(BMC Med Res Methodol 24:6, 2024),比较了重新表达的方法,得出了重新表达方法不可靠的结论。在他们的分析中,他们将估计的效应估计(随机变量)视为常量,没有固有的可变性。这封信描述了这一假设产生的两个地方,以及它是如何影响他们的结论的。虽然重新表达方法在估计观察点估计方面显示出潜在的改进空间,但在统计上适当考虑可变性的情况下,对于小到中等样本量(最多约5000)使用重新表达似乎是合适的。这与作者的结论形成对比,即使用重新表达方法不适合进行荟萃分析。
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引用次数: 0
Response to "The importance of considering variability in re-expression of effect estimates for use in meta-analysis." (Kopylev and Dzierlenga 2025). 对“在meta分析中使用的效应估计的重新表达中考虑可变性的重要性”的回应。(Kopylev and Dzierlenga 2025)。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-10-30 DOI: 10.1186/s12874-025-02699-8
Matthew W Linakis, Matthew P Longnecker
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引用次数: 0
Identifying delayed human response to external risks: an econometric analysis of mobility change during a pandemic. 识别人类对外部风险的滞后反应:大流行期间流动性变化的计量经济学分析。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-10-29 DOI: 10.1186/s12874-025-02696-x
Gaofei Zhang, Ann Osi, Navid Ghaffarzadegan, Hazhir Rahmandad, Ran Xu

Background: Human behavioral responses to changes in risks are often delayed. Methods for estimating these delayed responses either rely on rigid assumptions about the delay distribution (e.g., Erlang distribution), producing a poor fit, or yield period-specific estimates (e.g., estimates from the Autoregressive Distributed Lag (ARDL) model) that are difficult to integrate into simulation models. We propose a hybrid ARDL-Erlang approach that yields an interpretable summary of behavioral responses suitable for incorporation into simulation models.

Method: We apply the ARDL-Erlang approach to estimate the effect of COVID-19 deaths on mobility across US counties from October 2020 to July 2021. A standard panel autoregressive distributed lag (ARDL) model first estimates the effect of past deaths and past mobility on current mobility. The ARDL model is then transformed into an Infinite Distributed Lag (IDL) model consisting of only past deaths. The coefficients of the past deaths are aggregated into an overall effect and fit to an Erlang distribution, summarized by average delay length and shape parameter.

Results: Our results show that on the national level, a one-standard-deviation permanent increase in weekly deaths per 100,000 population (log-transformed) is associated with a 0.46-standard-deviation decrease in human mobility in the long run, where the delay distribution follows a first-order Erlang distribution, and the average delay length is about 3.2 weeks. However, there is much heterogeneity across states, with first- to third-order Erlang delays and 2 to 18 weeks of average delay providing a theoretically cogent summary of how mobility followed changes in deaths during the first year and a half of the pandemic.

Conclusion: This study provides a novel approach to estimating delayed human responses to health risks using a hybrid ARDL-Erlang model. Our findings highlight significant variability in the impact and timing of responses across states, underscoring the need for tailored public health policies. This study can also serve as guidelines and an example for identifying delayed human behavior in other settings.

背景:人类对风险变化的行为反应往往是延迟的。估计这些延迟响应的方法要么依赖于对延迟分布的严格假设(例如,Erlang分布),产生较差的拟合,要么产生特定时期的估计(例如,自回归分布滞后(ARDL)模型的估计),这些估计很难集成到模拟模型中。我们提出了一种混合的ARDL-Erlang方法,该方法产生适合纳入模拟模型的可解释的行为响应摘要。方法:我们应用ARDL-Erlang方法估计2020年10月至2021年7月COVID-19死亡对美国各县流动性的影响。标准面板自回归分布滞后(ARDL)模型首先估计过去死亡和过去流动性对当前流动性的影响。然后将ARDL模型转换为仅包含过去死亡的无限分布滞后(IDL)模型。过去死亡的系数被汇总成一个整体效应,并拟合Erlang分布,由平均延迟长度和形状参数总结。结果表明,在全国范围内,每10万人每周死亡人数(对数变换)每增加1个标准差,长期人口流动性就会下降0.46个标准差,其中延迟分布服从一阶二郎分布,平均延迟长度约为3.2周。然而,各州之间存在很大的异质性,一阶至三阶厄朗延迟和2至18周的平均延迟在理论上提供了令人信服的总结,说明在大流行的头一年半期间,流动性是如何随着死亡人数的变化而变化的。结论:本研究提供了一种使用混合ARDL-Erlang模型来估计人类对健康风险的延迟反应的新方法。我们的研究结果强调了各州在应对措施的影响和时间上的显著差异,强调了制定量身定制的公共卫生政策的必要性。这项研究也可以作为在其他环境中识别延迟人类行为的指南和例子。
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引用次数: 0
Two-stage sampling for better survival model performance. 两阶段抽样以获得更好的生存模型性能。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-10-28 DOI: 10.1186/s12874-025-02655-6
Yunwei Zhang, Samuel Muller

Background: With the emergence of high-dimensional censored survival data in health and medicine, the use of survival models for risk prediction is increasing. To date, practical techniques exist for splitting data for model training and performance evaluation. While different sampling methods have been compared for their performances, the effect of data splitting ratio and survival specific characteristics have not yet been examined for high dimensional censored survival data.

Methods: We first conduct an empirical study of using the simple random sampling technique and stratified sampling technique on real high-dimensional gene expression datasets Lasso Cox model performance. For the simple random sampling technique, various data splitting ratios are investigated. For the stratified sampling, different survival specific variables are investigated. We consider C-index and Brier Score as evaluation metrics. We further develop and validate a two-stage purposive sampling approach motivated by our empirical study findings.

Results: Our findings reveal that survival specific characteristics contribute to model performance across training, testing and validation data. The proposed two-stage purposive sampling approach performs well in mitigating excessive diversity within the training data for both simulation study and real data analysis, leading to better survival model performances.

Conclusions: We recommend careful consideration of key factors in different sampling techniques when developing and validating survival models. Using methods such as the proposed method to mitigate excessive diversity provides a solution.

背景:随着健康和医学领域高维截尾生存数据的出现,越来越多地使用生存模型进行风险预测。到目前为止,存在用于模型训练和性能评估的分割数据的实用技术。虽然已经比较了不同的采样方法的性能,但尚未研究数据分割比和生存特定特征对高维截后生存数据的影响。方法:首先对真实高维基因表达数据集Lasso Cox模型性能进行简单随机抽样技术和分层抽样技术的实证研究。对于简单的随机抽样技术,研究了不同的数据分割率。对于分层抽样,研究了不同的生存特异性变量。我们将C-index和Brier Score作为评价指标。我们进一步发展和验证两阶段的有目的的抽样方法的动机是我们的实证研究结果。结果:我们的研究结果表明,在训练、测试和验证数据中,生存特定特征有助于模型的性能。所提出的两阶段有目的抽样方法在模拟研究和真实数据分析的训练数据中都能很好地减轻过度的多样性,从而提高生存模型的性能。结论:我们建议在开发和验证生存模型时,仔细考虑不同采样技术中的关键因素。利用本文提出的方法来缓解过度多样性提供了一种解决方案。
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引用次数: 0
Comparison of machine learning methods versus traditional Cox regression for survival prediction in cancer using real-world data: a systematic literature review and meta-analysis. 机器学习方法与传统Cox回归在使用真实世界数据进行癌症生存预测的比较:系统文献综述和荟萃分析。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-10-28 DOI: 10.1186/s12874-025-02694-z
Yinan Huang, Shadi Bazzazzadehgan, Jieni Li, Arman Arabshomali, Mai Li, Kaustuv Bhattacharya, John P Bentley

Background: Accurate prediction of survival in oncology can guide targeted interventions. The traditional regression-based Cox proportional hazards (CPH) model has statistical assumptions and may have limited predictive accuracy. With the capability to model large datasets, machine learning (ML) holds the potential to improve the prediction of time-to-event outcomes, such as cancer survival outcomes. The present study aimed to systematically summarize the use of ML models for cancer survival outcomes in observational studies and to compare the performance of ML models with CPH models.

Methods: We systematically searched PubMed, MEDLINE (via EBSCO), and Embase for studies that evaluated ML models vs. CPH models for cancer survival outcomes. The use of ML algorithms was summarized, and either the area under the curve (AUC) or the concordance index (C-index) for the ML and CPH models were presented descriptively. Only studies that provided a measure of discrimination, i.e., AUC or C-index, and 95% confidence interval (CI) were included in the final meta-analysis. A random-effects model was used to compare the predictive performance in the pooled AUC or C-index estimates between ML and CPH models using R. The quality of the studies was evaluated using available checklists. Multiple sensitivity analyses were performed.

Results: A total of 21 studies were included for systematic review and 7 for meta-analysis. Across the 21 articles, diverse ML models were used, including random survival forest (N=16, 76.19%), gradient boosting (N=5, 23.81%), and deep learning (N=8, 38.09%). In predicting cancer survival outcomes, ML models showed no superior performance over CPH regression. The standardized mean difference in AUC or C-index was 0.01 (95% CI: -0.01 to 0.03). Results from the sensitivity analyses confirmed the robustness of the main findings.

Conclusions: ML models had similar performance compared with CPH models in predicting cancer survival outcomes. Although this systematic review highlights the promising use of ML to improve the quality of care in oncology, findings from this review also suggest opportunities to improve ML reporting transparency. Future systematic reviews should focus on the comparative performance between specific ML models and CPH regression in time-to-event outcomes in specific type of cancer or other disease areas.

背景:准确预测肿瘤患者的生存期可以指导有针对性的干预措施。传统的基于回归的Cox比例风险(CPH)模型具有统计假设,预测精度有限。由于能够对大型数据集进行建模,机器学习(ML)有可能改善对时间到事件结果的预测,例如癌症生存结果。本研究旨在系统总结观察性研究中ML模型对癌症生存结果的应用,并比较ML模型与CPH模型的性能。方法:我们系统地检索PubMed, MEDLINE(通过EBSCO)和Embase,以评估ML模型与CPH模型对癌症生存结果的研究。总结了ML算法的使用,并描述性地给出了ML和CPH模型的曲线下面积(AUC)或一致性指数(C-index)。最终的荟萃分析中只纳入了提供歧视度量的研究,即AUC或C-index和95%置信区间(CI)。随机效应模型用于比较使用r的ML和CPH模型在汇总AUC或c指数估计中的预测性能。使用可用的清单评估研究的质量。进行多重敏感性分析。结果:共纳入21项研究用于系统评价,7项用于荟萃分析。在21篇文章中,使用了不同的ML模型,包括随机生存森林(N=16, 76.19%),梯度增强(N=5, 23.81%)和深度学习(N=8, 38.09%)。在预测癌症生存结果方面,ML模型没有表现出优于CPH回归的表现。AUC或C-index的标准化平均差异为0.01 (95% CI: -0.01 ~ 0.03)。敏感性分析的结果证实了主要发现的稳健性。结论:与CPH模型相比,ML模型在预测癌症生存结果方面具有相似的性能。虽然这篇系统综述强调了机器学习在提高肿瘤护理质量方面的应用前景,但该综述的发现也表明了提高机器学习报告透明度的机会。未来的系统评价应侧重于特定ML模型和CPH回归在特定类型癌症或其他疾病领域的时间-事件结果之间的比较性能。
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引用次数: 0
A bayesian dynamic borrowing framework for improving the efficiency of clinical trials. 提高临床试验效率的贝叶斯动态借鉴框架。
IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-10-27 DOI: 10.1186/s12874-025-02691-2
Zengyue Zheng, Keer Chen, Pengfei Zhu, Haiyan Wu, Shuping Jiang, Dingheng Zhang, Shein-Chung Chow, Ying Wu
{"title":"A bayesian dynamic borrowing framework for improving the efficiency of clinical trials.","authors":"Zengyue Zheng, Keer Chen, Pengfei Zhu, Haiyan Wu, Shuping Jiang, Dingheng Zhang, Shein-Chung Chow, Ying Wu","doi":"10.1186/s12874-025-02691-2","DOIUrl":"10.1186/s12874-025-02691-2","url":null,"abstract":"","PeriodicalId":9114,"journal":{"name":"BMC Medical Research Methodology","volume":"25 1","pages":"241"},"PeriodicalIF":3.4,"publicationDate":"2025-10-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12557851/pdf/","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145375997","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":3,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"OA","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
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BMC Medical Research Methodology
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