Analysis of Stratified Mark-Specific Proportional Hazards Models under Two-Phase Sampling with Appli

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  An objective of preventive HIV vaccine efficacy trials is to understand how vaccineinduced immune responses to specific protein sequences of HIV associate with subsequent infection with specific sequences of HIV,where the immune response biomarkers are measured in vaccine recipients via a two-phase sampling design.
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