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Background Leaflet thrombosis (LT) is a multifaceted and underexplored condition that can manifest following transcatheter aortic valve implantation (TAVI). The objective of this study was to formulate a prediction model based on laboratory assessments and clinical parameters, providing additional guidance and insight into this relatively unexplored aspect of post-TAVI complications. Methods The present study was an observational prospective hypothesis-generating study, including 101 patients who underwent TAVI and a screening for LT (the primary endpoint) by multidetector computed tomography (MDCT). All images were acquired on a third-generation dual-source CT system. Levels of von Willebrand factor (vWF) activity, hemoglobin (Hb), and lactate dehydrogenase (LDH) were measured among other parameters. A predictive score utilizing binary logistic regression, Kaplan–Meier time-to-event analysis, and receiver operating characteristics (ROC) analysis was established. Results LT (11 subclinical and 2 clinical) was detected in 13 of 101 patients (13%) after a median time to screening by MDCT of 105 days (IQR, 98–129 days). Elevated levels of vWF activity (> 188%) pre-TAVI, decreased Hb values (< 11.9 g/dL), as well as increased levels of LDH (> 312 U/L) post-TAVI and absence of oral anticoagulation (OAC) were found in patients with subsequent LT formation as compared to patients without LT. The established EFFORT score ranged from − 1 to 3 points, with an increased probability for LT development in patients with ≥ 2 points (85.7% of LT cases) vs < 2 points (14.3% of LT cases; p < 0.001). Achieving an EFFORT score of ≥ 2 points was found to be significantly associated with a 10.8 times higher likelihood of developing an LT (p = 0.001). The EFFORT score has an excellent c-statistic (area under the curve (AUC) = 0.89; 95% CI 0.74–1.00; p = 0.001) and a high negative predictive value (98%). Conclusion An EFFORT score might be a helpful tool to predict LT development and could be used in risk assessment, if validated in confirmatory studies. Therefore, the score has the potential to guide the stratification of individuals for the planning of subsequent MDCT screenings. Graphical abstract Central illustration. Created with BioRender.com
Background Leaflet thrombosis (LT) is a multifaceted and underexplored condition that can manifest following transcatheter aortic valve implantation (TAVI). The objective of this study was to formulate a prediction model based on laboratory assessments and clinical parameters, providing additional guidance and insight into this relatively unexplored aspect of post-TAVI complications. Methods The present study was an observational prospective hypothesis-generating study, including 101 patients who underwent TAVI and a screening for LT (the primary endpoint) by multidetector computed tomography (MDCT). All images were acquired on a third-generation dual-source CT system. Levels of von Willebrand factor (vWF) activity, hemoglobin (Hb), and lactate dehydrogenase (LDH) were measured among other parameters. A predictive score utilizing binary logistic regression, Kaplan–Meier time-to-event analysis, and receiver operating characteristics (ROC) analysis was established. Results LT (11 subclinical and 2 clinical) was detected in 13 of 101 patients (13%) after a median time to screening by MDCT of 105 days (IQR, 98–129 days). Elevated levels of vWF activity (> 188%) pre-TAVI, decreased Hb values (< 11.9 g/dL), as well as increased levels of LDH (> 312 U/L) post-TAVI and absence of oral anticoagulation (OAC) were found in patients with subsequent LT formation as compared to patients without LT. The established EFFORT score ranged from − 1 to 3 points, with an increased probability for LT development in patients with ≥ 2 points (85.7% of LT cases) vs < 2 points (14.3% of LT cases; p < 0.001). Achieving an EFFORT score of ≥ 2 points was found to be significantly associated with a 10.8 times higher likelihood of developing an LT (p = 0.001). The EFFORT score has an excellent c-statistic (area under the curve (AUC) = 0.89; 95% CI 0.74–1.00; p = 0.001) and a high negative predictive value (98%). Conclusion An EFFORT score might be a helpful tool to predict LT development and could be used in risk assessment, if validated in confirmatory studies. Therefore, the score has the potential to guide the stratification of individuals for the planning of subsequent MDCT screenings. Graphical abstract Central illustration. Created with BioRender.com
We present the case of an elderly man with a history of diastolic congestive heart failure, severe aortic stenosis and atrial fibrillation, who presented with fatigue, weakness, coffee ground emesis and black tarry stool. Haemoglobin was 68 g/L. Lactate dehydrogenase was elevated at 1038. Evaluation by cardiology and gastroenterology specialists revealed reflux oesophagitis and a mild hiatal hernia on oesophagogastroduodenoscopy, normal colonoscopy and small bowel series without obstruction. Capsule endoscopy identified angiodysplasia in the small intestine.The patient was diagnosed with Heyde’s syndrome based on the triad of severe aortic stenosis, gastrointestinal bleeding from angiodysplasia and acquired von Willebrand syndrome. The patient underwent transcatheter aortic valve replacement, resulting in the resolution of symptoms.Heyde’s syndrome represents a challenging clinical entity requiring a multidisciplinary approach for accurate diagnosis and management. Early recognition, prompt intervention and interdisciplinary collaboration are crucial in optimising patient outcomes.
Background: Gastrointestinal angiodysplasia is a significant vascular anomaly characterized by dilated, tortuous blood vessels in the gastrointestinal tract. The current literature extensively documents the association between angiodysplasia and aortic stenosis, known as Heyde syndrome, characterized by the triad of aortic stenosis, GIB, and acquired von Willebrand syndrome. However, other valvular diseases, including mitral and tricuspid regurgitation, have also been implicated. This comprehensive systematic review aims to investigate the spectrum of valvular abnormalities, exploring the intricate mechanisms by which they contribute to gastrointestinal bleeding. Furthermore, it will evaluate the available surgical and nonsurgical treatment modalities, assessing their efficacy in mitigating the incidence of such bleeding. Methods: A comprehensive search of the Pubmed/MEDLINE database was conducted to identify relevant studies to retrieve relevant articles from August 2014 to August 2024. A combination of Medical Subject Heading (MeSH) terms and text words related to cardiac valvular diseases and GIB were used. MeSH terms included “gastrointestinal bleeding”, “heart valve diseases”, “hematochezia”, “heart valve prosthesis”, “bioprosthesis”, “native valve diseases”, and “mechanical valve”. Results: Forty-five papers met the inclusion criteria. Twenty-seven studies covered GIB in aortic valve disease, ten on mitral valve disease, two on tricuspid valve disease, and six on multiple valves. Conclusions: This systematic review demonstrates the association between angiodysplasia and aortic stenosis and highlights mitral regurgitation and tricuspid regurgitation as potential etiologies. Definitive management with valvuloplasty or valve replacement is vital to preventing the onset or recurrence of GIB in patients with valvular disease.
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