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New method for determining breast cancer recurrence-free survival using routinely collected real-world health data
by
Cheung, Winson Y.
, Quan, May Lynn
, Lupichuk, Sasha
, Xu, Yuan
, Jung, Hyunmin
, Feng, Yuanchao
, Lu, Mingshan
, Kong, Shiying
in
Algorithms
/ Biomedical and Life Sciences
/ Biomedicine
/ Breast cancer
/ Cancer
/ Cancer Research
/ Health aspects
/ Health Promotion and Disease Prevention
/ Identification algorithm
/ Information management
/ Management
/ Medicine/Public Health
/ Oncology
/ Patient outcomes
/ Real-world data
/ Relapse
/ Risk factors
/ Surgical Oncology
/ Survival analysis
/ Timing of recurrence
/ World health
2022
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New method for determining breast cancer recurrence-free survival using routinely collected real-world health data
by
Cheung, Winson Y.
, Quan, May Lynn
, Lupichuk, Sasha
, Xu, Yuan
, Jung, Hyunmin
, Feng, Yuanchao
, Lu, Mingshan
, Kong, Shiying
in
Algorithms
/ Biomedical and Life Sciences
/ Biomedicine
/ Breast cancer
/ Cancer
/ Cancer Research
/ Health aspects
/ Health Promotion and Disease Prevention
/ Identification algorithm
/ Information management
/ Management
/ Medicine/Public Health
/ Oncology
/ Patient outcomes
/ Real-world data
/ Relapse
/ Risk factors
/ Surgical Oncology
/ Survival analysis
/ Timing of recurrence
/ World health
2022
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Do you wish to request the book?
New method for determining breast cancer recurrence-free survival using routinely collected real-world health data
by
Cheung, Winson Y.
, Quan, May Lynn
, Lupichuk, Sasha
, Xu, Yuan
, Jung, Hyunmin
, Feng, Yuanchao
, Lu, Mingshan
, Kong, Shiying
in
Algorithms
/ Biomedical and Life Sciences
/ Biomedicine
/ Breast cancer
/ Cancer
/ Cancer Research
/ Health aspects
/ Health Promotion and Disease Prevention
/ Identification algorithm
/ Information management
/ Management
/ Medicine/Public Health
/ Oncology
/ Patient outcomes
/ Real-world data
/ Relapse
/ Risk factors
/ Surgical Oncology
/ Survival analysis
/ Timing of recurrence
/ World health
2022
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New method for determining breast cancer recurrence-free survival using routinely collected real-world health data
Journal Article
New method for determining breast cancer recurrence-free survival using routinely collected real-world health data
2022
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Overview
Background
In cancer survival analyses using population-based data, researchers face the challenge of ascertaining the timing of recurrence. We previously developed algorithms to identify recurrence of breast cancer. This is a follow-up study to detect the timing of recurrence.
Methods
Health events that signified recurrence and timing were obtained from routinely collected administrative data. The timing of recurrence was estimated by finding the timing of key indicator events using three different algorithms, respectively. For validation, we compared algorithm-estimated timing of recurrence with that obtained from chart-reviewed data. We further compared the results of cox regressions models (modeling recurrence-free survival) based on the algorithms versus chart review.
Results
In total, 598 breast cancer patients were included. 121 (20.2%) had recurrence after a median follow-up of 4 years. Based on the high accuracy algorithm for identifying the presence of recurrence (with 94.2% sensitivity and 79.2% positive predictive value), the majority (64.5%) of the algorithm-estimated recurrence dates fell within 3 months of the corresponding chart review determined recurrence dates. The algorithm estimated and chart-reviewed data generated Kaplan–Meier (K-M) curves and Cox regression results for recurrence-free survival (hazard ratios and
P
-values) were very similar.
Conclusion
The proposed algorithms for identifying the timing of breast cancer recurrence achieved similar results to the chart review data and were potentially useful in survival analysis.
Publisher
BioMed Central,BioMed Central Ltd,BMC
Subject
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