Jove
Visualize
联系我们
JoVE
x logofacebook logolinkedin logoyoutube logo
关于 JoVE
概览领导团队博客JoVE 帮助中心
作者
出版流程编辑委员会范围与政策同行评审常见问题投稿
图书馆员
用户评价订阅访问资源图书馆顾问委员会常见问题
研究
JoVE JournalMethods CollectionsJoVE Encyclopedia of Experiments存档
教育
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab Manual教师资源中心教师网站
使用条款与条件
隐私政策
政策

相关概念视频

Assumptions of Survival Analysis01:15

Assumptions of Survival Analysis

99
Survival models analyze the time until one or more events occur, such as death in biological organisms or failure in mechanical systems. These models are widely used across fields like medicine, biology, engineering, and public health to study time-to-event phenomena. To ensure accurate results, survival analysis relies on key assumptions and careful study design.
99
Confounding in Epidemiological Studies01:27

Confounding in Epidemiological Studies

146
Confounding in statistical epidemiology represents a pivotal challenge, referring to the distortion in the perceived relationship between an exposure and an outcome due to the presence of a third variable, known as a confounder. This variable is associated with both the exposure and the outcome but is not a direct link in their causal chain. Its presence can lead to erroneous interpretations of the exposure's effect, either exaggerating or underestimating the true association. This...
146
Truncation in Survival Analysis01:09

Truncation in Survival Analysis

171
Truncation in survival analysis refers to the exclusion of individuals or events from the dataset based on specific criteria related to the time of the event. This exclusion can happen in two primary forms: left truncation and right truncation.
Left truncation occurs when individuals who experienced the event of interest before a certain time are not included in the study. This is often due to a "delayed entry" into the study where only those who survive until a certain entry point are...
171
Comparing the Survival Analysis of Two or More Groups01:20

Comparing the Survival Analysis of Two or More Groups

156
Survival analysis is a cornerstone of medical research, used to evaluate the time until an event of interest occurs, such as death, disease recurrence, or recovery. Unlike standard statistical methods, survival analysis is particularly adept at handling censored data—instances where the event has not occurred for some participants by the end of the study or remains unobserved. To address these unique challenges, specialized techniques like the Kaplan-Meier estimator, log-rank test, and...
156
Censoring Survival Data01:09

Censoring Survival Data

68
Survival analysis is a statistical method used to analyze time-to-event data, often employed in fields such as medicine, engineering, and social sciences. One of the key challenges in survival analysis is dealing with incomplete data, a phenomenon known as "censoring." Censoring occurs when the event of interest (such as death, relapse, or system failure) has not occurred for some individuals by the end of the study period or is otherwise unobservable, and it might have many different...
68
Parametric Survival Analysis: Weibull and Exponential Methods01:14

Parametric Survival Analysis: Weibull and Exponential Methods

370
Parametric survival analysis models survival data by assuming a specific probability distribution for the time until an event occurs. The Weibull and exponential distributions are two of the most commonly used methods in this context, due to their versatility and relatively straightforward application.
Weibull Distribution
The Weibull distribution is a flexible model used in parametric survival analysis. It can handle both increasing and decreasing hazard rates, depending on its shape parameter...
370

您也可能阅读

相关文章

通过共同作者、期刊和引用图与本文相关的文章。

排序
Same author

The pigment-dispersing factor receptor (PDFR) gene is involved in circadian rhythm and moulting in Hyphantria cunea.

Insect molecular biology·2026
Same author

Overexpression of <i>PtrPIP2:4</i> Accelerates Adventitious Root Emergence, Promotes Adventitious Root Elongation, and Increases Lateral Root Number in Poplar.

Plants (Basel, Switzerland)·2026
Same author

Preparation methods, structural characterization, pharmacological properties, and potential industrial utilization of polysaccharides from Aloe vera: A review.

International journal of biological macromolecules·2026
Same author

Systemic inflammation as a mediator between food preferences and metabolic syndrome: a cross-sectional study.

Frontiers in nutrition·2026
Same author

Differential associations of cooking behaviors with polycyclic aromatic hydrocarbon exposure-related platelet traits as cardiovascular risk biomarkers.

Frontiers in cardiovascular medicine·2026
Same author

Cotton solanesyl diphosphate synthases GhSPS1/2 catalyzes plastoquinone-9 (PQ-9) biosynthesis associating with photoprotection.

Plant science : an international journal of experimental plant biology·2026

相关实验视频

Updated: Jun 10, 2025

Establishing a Competing Risk Regression Nomogram Model for Survival Data
04:57

Establishing a Competing Risk Regression Nomogram Model for Survival Data

Published on: October 23, 2020

10.1K

在使用高维混因子的生存分析中估计因果效应.

Fei Jiang1, Ge Zhao2, Rosa Rodriguez-Monguio3

  • 1Department of Epidemiology and Biostatistics, The University of California, San Francisco, CA 94143, United States.

Biometrics
|October 14, 2024
PubMed
概括

这项研究引入了一种新方法,用于在高维数据中使用受限平均存活时间 (RMST) 估计因果治疗效应. 该方法解决了传统方法的局限性,为生存数据分析提供了可靠的估计器.

关键词:
有关因果推理的推理.一个因素模型模型的因素模型.这是高维的高维空间.匹配的匹配匹配的匹配生存分析,生存分析.

更多相关视频

Inverse Probability of Treatment Weighting Propensity Score using the Military Health System Data Repository and National Death Index
06:55

Inverse Probability of Treatment Weighting Propensity Score using the Military Health System Data Repository and National Death Index

Published on: January 8, 2020

14.4K
An R-Based Landscape Validation of a Competing Risk Model
05:37

An R-Based Landscape Validation of a Competing Risk Model

Published on: September 16, 2022

2.0K

相关实验视频

Last Updated: Jun 10, 2025

Establishing a Competing Risk Regression Nomogram Model for Survival Data
04:57

Establishing a Competing Risk Regression Nomogram Model for Survival Data

Published on: October 23, 2020

10.1K
Inverse Probability of Treatment Weighting Propensity Score using the Military Health System Data Repository and National Death Index
06:55

Inverse Probability of Treatment Weighting Propensity Score using the Military Health System Data Repository and National Death Index

Published on: January 8, 2020

14.4K
An R-Based Landscape Validation of a Competing Risk Model
05:37

An R-Based Landscape Validation of a Competing Risk Model

Published on: September 16, 2022

2.0K

科学领域:

  • 生物统计学 生物统计学
  • 流行病学 流行病学
  • 数据科学数据科学数据科学

背景情况:

  • 高维数据对传统的因果推理方法构成挑战.
  • 现有的匹配方法与众多混因子作斗争,缺乏统计学严谨性.

研究的目的:

  • 在高维存率数据中开发一种可靠的方法来估计因果治疗效应.
  • 估计治疗方法之间的受限平均存活时间 (RMST) 的差异.

主要方法:

  • 组合因子模型和足够的维度缩小用于倾向和预后得分.
  • 开发了一个基于内核的双倍强大的RMST差异估计器.
  • 建立了理论性质,包括一致性和非对称的正常性.

主要成果:

  • 提出的方法有效地处理高维的混因素.
  • 证明了估计器与匹配技术的联系.
  • 在分散型大B细胞淋巴瘤数据集上验证了方法.

结论:

  • 新方法为高维环境中因果效应估计提供了统计学上合理的方法.
  • 提供了一个可靠的工具来比较基于RMST的治疗方法.
  • 适用于复杂的数据集,其中混因子数量超过受试者数量.