Actively Recruiting
Prognostic Model for Long-Term Cardiac Function After Pulmonary Embolism Based on Dynamic Electrocardial Signal and Circulating Biomarkers
Led by China-Japan Friendship Hospital · Updated on 2024-08-07
500
Participants Needed
1
Research Sites
104 weeks
Total Duration
On this page
AI-Summary
What this Trial Is About
Pulmonary embolism (PE) is a highly morbid and fatal cardiovascular disease. Right ventricular dysfunction (RVD) secondary to PE indicates a poor prognosis and serves as a critical basis for risk stratification. Recent studies have shown that over one-third of patients continue to experience RVD one year after PE, with the mechanisms and regression remaining unclear. Although electrocardiography (ECG) is the most commonly used test for cardiac disease, its diagnostic specificity for PE is limited. In recent years, artificial intelligence (AI) has successfully extracted hundreds of features from data that are difficult for the human eye to recognize. The correlation between daily vital signs monitored by wearable devices and functional signs of chronic cardiovascular disease suggests the potential of AI in detecting disease progression. There is a lack of specific markers for right ventricular function post-PE, and the significance and changes of these markers in disease progression have not yet been explored. This study aims to develop a predictive model for the progression of RVD after PE using AI, combining electromyography, wearable devices, and vitality markers. In this prospective cohort study, 500 patients with acute PE at intermediate or higher risk were enrolled. Approximately 200 patients with RVD at discharge were followed for one year, with daily electromyographic data collected using portable electromyographs. Biospecimens were collected at the following time points: admission, discharge, and follow-up at 3, 6, and 12 months and a variety of inflammatory markers were measured using a multifactorial assay on liquid suspension cores. These data were integrated into a continuous disease diagnostic model based on a deep learning restrictive updating strategy. Ultimately, a continuous disease diagnosis and prognosis algorithm was developed, yielding a model for predicting the progression of RVD after PE using multifactorial assays on liquid suspension cores to measure various inflammatory markers.
CONDITIONS
Official Title
Prognostic Model for Long-Term Cardiac Function After Pulmonary Embolism Based on Dynamic Electrocardial Signal and Circulating Biomarkers
Who Can Participate
Eligibility Criteria
You may qualify if you...
- Age 18 years or older
- Confirmed diagnosis of pulmonary embolism according to 2019 ESC Guidelines
- Diagnosis made within 14 days before enrollment
- Risk stratification of intermediate-low, intermediate-high, or high risk per 2019 ESC Guidelines
- Patient agrees to sign informed consent
You will not qualify if you...
- Previous diagnosis of venous thromboembolism without evidence of recurrence, re-hospitalization, or treatment
- Unable to wear the cardiac acquisition system due to chest surgery, localized damage, allergy, or similar reasons
- Unable to complete the 1-year follow-up
- Unable to operate portable ECG mapping due to cognitive impairment or lack of a smartphone
AI-Screening
AI-Powered Screening
Complete this quick 3-step screening to check your eligibility
Trial Site Locations
Total: 1 location
1
China-Japan Friendship Hospital
Beijing, Beijing Municipality, China, 100029
Actively Recruiting
Research Team
Z
Zhenguo Zhai, Ph.D
CONTACT
How is the study designed?
Study Type
OBSERVATIONAL
Masking
N/A
Allocation
N/A
Model
N/A
Primary Purpose
N/A
Number of Arms
0
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