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Follistatin 344

FS-344, Activin-Binding Protein, FST344

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Studies 2
Trials 73
Recruiting OBSERVATIONAL NCT07236970

Multicenter Study on the Development of Pulmonary Arterial Hypertension Screening Models Based on Artificial Intelligence for Patients With Systemic Sclerosis

View on ClinicalTrials.gov Updated Dec 15, 2025

Brief Summary

Pulmonary Arterial Hypertension (PAH) is a rare and severe condition that can be associated with Systemic Sclerosis (SSc), significantly worsening the prognosis of the latter disease. Screening programs based on clinical, laboratory, pulmonary function test, electrocardiographic, and echocardiographic data have been shown to enable earlier diagnosis and improve the prognosis of PAH associated with SSc. However, the hemodynamic criteria for the diagnosis of PAH have recently changed, and the usefulness of these screening programs in this new context is unknown. The primary objective of this study is to develop a PAH screening program in patients with SSc through the use of different artificial intelligence algorithms, comparing these algorithms with classical screening programs. These algorithms will be externally validated in different hospitals in Spain. As secondary objectives, the study will assess the usefulness of various proteins involved in the metabolic pathways related to the development of PAH, as well as certain parameters of right ventricular function and measures of quality-of-life impact, in the prognostic evaluation of PAH associated with SSc. To this end, simple and reproducible clinical data will be used, such as electrocardiogram, echocardiogram, and different quality-of-life scales obtained from major PAH and SSc registries. Machine learning techniques and Bayesian networks will be applied to generate artificial intelligence models for screening and prognostic assessment.

Detailed Description

Pulmonary arterial hypertension (PAH) is a rare and serious disease, affecting fewer than 50 people per million inhabitants. Its diagnosis requires right heart catheterization, an invasive procedure. PAH is a diverse condition and is often linked to autoimmune diseases such as systemic sclerosis (SSc), which affects about 277 people per million inhabitants in Spain, meaning that over 12,000 people may have the disease in the country. PAH develops in around 10% of SSc patients and is the main cause of death in this group. Although there is no cure, pulmonary vasodilator drugs have helped patients live longer, sometimes at the cost of reduced quality of life. In more advanced stages of PAH, continuous intravenous or subcutaneous therapies are often needed. Traditional treatments mainly focus on widening the blood vessels in the lungs to reduce heart problems. More recently, new drugs have been developed that act directly on the mechanisms causing the disease, with the goal of improving blood flow in the lungs. Artificial intelligence (AI) and a better understanding of disease mechanisms are changing healthcare. However, it is not yet known how useful AI might be in screening, diagnosing, and predicting outcomes in patients with SSc-associated PAH (SSc-PAH). In past decades, screening programs using clinical data, lab tests, and echocardiography have been developed to detect PAH before symptoms appear. These programs have helped identify patients earlier and reduce mortality. However, their low specificity can lead to many unnecessary right heart catheterizations. This problem may have increased since the 2022 update of pulmonary hypertension diagnostic criteria, which now use less strict hemodynamic thresholds, potentially making early diagnosis more difficult. This is an ambispective observational study, combining retrospective data from existing patient records with prospective follow-up of newly enrolled patients. The aim is to improve early detection of PAH in SSc patients by using AI-based algorithms that integrate simple and reproducible clinical data, such as electrocardiograms and echocardiograms. It is expected that these AI models will perform better than traditional screening programs, allowing earlier detection of PAH in many patients. Earlier and more accurate screening could also reduce the number of unnecessary invasive procedures, benefiting both clinical outcomes and patients' experience of their health. The study will also examine protein expression in SSc-PAH patients, detailed measures of right heart function using echocardiography at rest and during exercise, and patient-reported health status. This will help determine how useful these factors are for predicting outcomes and for guiding treatment, supporting more personalized care and improving both clinical results and patient-reported health. Through the collaboration of reference centers for pulmonary hypertension and systemic autoimmune diseases, together with patient associations, this study aims to ensure that many affected patients can access earlier and better care, ultimately improving survival and quality of life.

Primary Outcomes

Measure: Diagnostic accuracy of AI-based screening models for pulmonary arterial hypertension (PAH) in systemic sclerosis (SSc)
TimeFrame: At baseline (cross-sectional assessment at study entry)
Description: Sensitivity, specificity, and area under the ROC curve (AUC) of machine learning and Bayesian network-based algorithms compared with classical screening algorithms, using right heart catheterization as the diagnostic gold standard.
Measure: Event-free survival in patients with systemic sclerosis-associated PAH
TimeFrame: Up to 24 months of follow-up
Description: Time to first clinical event defined as all-cause mortality, hospitalization due to PAH, or clinical worsening (progression of WHO functional class, decline in 6-minute walk distance, or worsening hemodynamics).
Measure: Patient-reported quality of life in systemic sclerosis-associated PAH
TimeFrame: Baseline and 24 months
Description: Change in quality-of-life scores measured with validated questionnaires from baseline to follow-up.

Trial Information

NCT ID

NCT07236970

Status

Recruiting

Study Type

OBSERVATIONAL

Sponsor

Alejandro Cruz Utrilla

Last Updated

December 15, 2025

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