ABSTRACT Over 20% of patients discharged from the Emergency Department (ED) have unplanned revisits within 30 days, often due to preventable causes. Upon revisit, the ED physician lacks vital data on the timeline of events and physiologic changes leading to the patient’s return, which can lead to delayed diagnosis and over-testing. Continuous monitoring of vital signs and activity can produce detailed information about a patient’s condition and stability, both in the hospital and after discharge. It is not known, however, which patients benefit most from post-discharge monitoring (PDM), which monitoring signals and strategies best predict quality of life and ED revisit risk for specific patient populations, and how PDM data can be made diagnostically useful when a patient returns to the hospital. To address these gaps, we aim to produce a framework for the integration of PDM and acute care to improve our understanding of ED patient trajectories, both after discharge and upon revisit. Specifically, we hypothesize that integrating hospital data and PDM can improve the predictability of ED revisits, identify potential targets for post-discharge interventions, and improve diagnosis and disposition of ED revisits that cannot be prevented. We will enroll a clinically and demographically diverse cohort of ED patients at high risk of revisit within 30 days, and configure noninvasive wearable monitors with an accompanying smartphone app to continuously track activity and physiology after discharge. We will develop interpretable deep learning models to predict revisits and changes in health-related quality of life, and characterize, for specific patient populations, the monitoring signals and measurement frequencies most relevant to predicting revisits and quality of life, and the prediction horizons in which preventive interventions could be delivered. Finally, we will combine in-hospital and PDM data to develop and evaluate an intervisit report for the ED physician treating a returning patient, summarizing the relevant trends in patient physiology, activity, and health-related quality of life between visits, and including a large language model-derived interpretation of the antecedents of the return visit. Better understanding how and for which patient populations PDM can predict ED revisits and quality of life can improve the integration of acute and ambulatory care, identify new clinical use cases for existing monitoring technologies, and inform the design and timing of preventive interventions. Analyzing intervisit trajectories can reveal the antecedents of acute presentations, and improve diagnosis and disposition upon ED revisit.