Active surveillance (AS), where biopsies are conducted to detect cancer progression, has been acknowledged as an efficient way to reduce the overtreatment of prostate cancer. Most AS cohorts use fixed biopsy schedules for all patients. However, the ideal test frequency remains unknown, and the routine use of such invasive tests burdens the patients. An emerging idea is to generate personalized biopsy schedules based on each patient's progression-specific risk. To achieve that, we propose the interval-censored cause-specific joint model (ICJM), which models the impact of longitudinal biomarkers on cancer progression while considering the competing event of early treatment initiation. The underlying likelihood function incorporates the interv...
BackgroundA better understanding of the independent predictors of disease progression for prostate c...
Development and application of statistical models for medical scientific researc
Interval-censored data often arise from serial screening programs for chronic diseases or from longi...
ObjectiveTo develop a model and methodology for predicting the risk of Gleason upgrading in patients...
Benchmark surveillance tests for diagnosing disease progression (biopsies, endoscopies, etc.) in ear...
OBJECTIVE: To develop a model and methodology for predicting the risk of Gleason upgrading in patien...
Summary. Low-risk prostate cancer patients enrolled in active surveillance (AS) programs commonly un...
Benchmark surveillance tests for detecting disease progression (eg, biopsies, endoscopies) in early-...
Background. Low-risk prostate cancer patients enrolled in active surveillance programs commonly unde...
This study aimed to estimate the rates of biopsy undersampling and progression for four prostate can...
BackgroundMen on active surveillance (AS) face repeated biopsies. Most biopsy specimens will not sho...
BackgroundThe optimal interval for repeat biopsy during active surveillance (AS) for prostate cancer...
PurposeDuring active surveillance for localized prostate cancer, the timing of the first surveillanc...
BACKGROUND: The optimal interval for repeat biopsy during active surveillance (AS) for prostate canc...
Two active surveillance risk calculators to predict disease reclassification on prostate biopsy are ...
BackgroundA better understanding of the independent predictors of disease progression for prostate c...
Development and application of statistical models for medical scientific researc
Interval-censored data often arise from serial screening programs for chronic diseases or from longi...
ObjectiveTo develop a model and methodology for predicting the risk of Gleason upgrading in patients...
Benchmark surveillance tests for diagnosing disease progression (biopsies, endoscopies, etc.) in ear...
OBJECTIVE: To develop a model and methodology for predicting the risk of Gleason upgrading in patien...
Summary. Low-risk prostate cancer patients enrolled in active surveillance (AS) programs commonly un...
Benchmark surveillance tests for detecting disease progression (eg, biopsies, endoscopies) in early-...
Background. Low-risk prostate cancer patients enrolled in active surveillance programs commonly unde...
This study aimed to estimate the rates of biopsy undersampling and progression for four prostate can...
BackgroundMen on active surveillance (AS) face repeated biopsies. Most biopsy specimens will not sho...
BackgroundThe optimal interval for repeat biopsy during active surveillance (AS) for prostate cancer...
PurposeDuring active surveillance for localized prostate cancer, the timing of the first surveillanc...
BACKGROUND: The optimal interval for repeat biopsy during active surveillance (AS) for prostate canc...
Two active surveillance risk calculators to predict disease reclassification on prostate biopsy are ...
BackgroundA better understanding of the independent predictors of disease progression for prostate c...
Development and application of statistical models for medical scientific researc
Interval-censored data often arise from serial screening programs for chronic diseases or from longi...