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 observed. For instance, in an occupational study, workers who retired or died before the study's initiation would not be part of the dataset, leading to a bias that only includes those still at risk after the entry point.

Right truncation is less common and occurs when only individuals who have experienced the event by a certain time are included. This can happen in studies where the event has already occurred, and only those with observed outcomes are considered. An example would be a mortality study where only deaths within a specific timeframe are recorded, excluding those who lived beyond the observation period.

The difference between truncation and censoring lies in data availability. Censoring occurs when there is incomplete information about the event time; the exact time might not be known, but there is some information available, such as the fact that an event has not occurred up to a certain point (right censoring) or had already occurred before observation began (left censoring). In contrast, truncation involves no data at all for certain subjects who do not meet the entry criteria; they are completely excluded from the analysis.

Other examples of truncation include studies on diseases where only individuals diagnosed after a specific date are included, excluding those diagnosed earlier (left truncation). Similarly, in astronomical studies, only observable stars within a certain distance are considered, while those too far away to be detected are excluded (right truncation).

장에서 15:

article

Now Playing

15.13 : Truncation in Survival Analysis

Survival Analysis

66 Views

article

15.1 : Introduction To Survival Analysis

Survival Analysis

65 Views

article

15.2 : Life Tables

Survival Analysis

31 Views

article

15.3 : Survival Curves

Survival Analysis

30 Views

article

15.4 : Actuarial Approach

Survival Analysis

25 Views

article

15.5 : Kaplan-Meier Approach

Survival Analysis

34 Views

article

15.6 : Assumptions of Survival Analysis

Survival Analysis

27 Views

article

15.7 : Comparing the Survival Analysis of Two or More Groups

Survival Analysis

40 Views

article

15.8 : The Mantel-Cox Log-Rank Test

Survival Analysis

126 Views

article

15.9 : Applications of Life Tables

Survival Analysis

20 Views

article

15.10 : Cancer Survival Analysis

Survival Analysis

204 Views

article

15.11 : Hazard Rate

Survival Analysis

36 Views

article

15.12 : Hazard Ratio

Survival Analysis

35 Views

article

15.14 : Censoring Survival Data

Survival Analysis

21 Views

article

15.15 : Survival Tree

Survival Analysis

16 Views

See More

JoVE Logo

개인 정보 보호

이용 약관

정책

연구

교육

JoVE 소개

Copyright © 2025 MyJoVE Corporation. 판권 소유