heart failure diagnosis
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2022 ◽  
Author(s):  
Mimount Bourfiss ◽  
Marion van Vugt ◽  
Abdulrahman I Alasiri ◽  
Bram Ruijsink ◽  
Jessica van Setten ◽  
...  

Background. (Likely) pathogenic variants associated with arrhythmogenic cardiomyopathy (ACM), dilated cardiomyopathy (DCM) and hypertrophic cardiomyopathy (HCM) are recommended to be reported as secondary findings in genome sequencing studies. This provides opportunities for early diagnosis, but also fuels uncertainty in variant carriers (G+), since disease penetrance is incomplete. We assessed the prevalence and disease expression of G+ in the general population. Methods. We identified (likely) pathogenic variants associated with ACM, DCM and/or HCM in 200,643 UK Biobank individuals, who underwent whole exome sequencing. We calculated the prevalence of G+ and analysed the frequency of cardiomyopathy/heart failure diagnosis. In undiagnosed individuals, we analysed early signs of disease expression. Results. We found a prevalence of 1:578, 1:251 and 1:149 for (likely) pathogenic variants associated with ACM, DCM and HCM respectively. Compared to controls, cardiovascular mortality was higher in DCM G+ (OR 1.67 [95% CI 1.04;2.59], p=0.030), but similar in ACM and HCM G+ (p≥0.100). More specifically, cardiomyopathy or heart failure diagnosis were more frequent in DCM G+ (OR 3.66 [95% CI 2.24;5.81], p=4.9×10-7) and HCM G+ (OR 3.03 [95% CI 1.98;4.56], p=5.8×10-7), but comparable in ACM G+ (p=0.172). In contrast, ACM G+ had more ventricular arrhythmias (p=3.3×10-4). In undiagnosed individuals, left ventricular ejection fraction was reduced in DCM G+ (p=0.009). Conclusions. In the general population, (likely) pathogenic variants associated with ACM, DCM or HCM are not uncommon. Although G+ have increased mortality and morbidity, disease expression in these carriers from the general population remains low. Decisions on application of cascade screening and frequency of cardiological examination should be based on multiple factors, such as the variant and disease expression.


2022 ◽  
Vol 13 (1) ◽  
pp. 1-4
Author(s):  
Ibrahim Abdulrahman Altukhays ◽  
Salman Hejab Alosaimi ◽  
Meshari Assaf Alotaibi ◽  
Amirh Ayman Aamzami ◽  
Zainab Adel Slais ◽  
...  

2021 ◽  
Vol 2021 ◽  
pp. 1-16
Author(s):  
Ebrahim Mohammed Senan ◽  
Ibrahim Abunadi ◽  
Mukti E. Jadhav ◽  
Suliman Mohamed Fati

Cardiovascular disease (CVD) is one of the most common causes of death that kills approximately 17 million people annually. The main reasons behind CVD are myocardial infarction and the failure of the heart to pump blood normally. Doctors could diagnose heart failure (HF) through electronic medical records on the basis of patient’s symptoms and clinical laboratory investigations. However, accurate diagnosis of HF requires medical resources and expert practitioners that are not always available, thus making the diagnosing challengeable. Therefore, predicting the patients’ condition by using machine learning algorithms is a necessity to save time and efforts. This paper proposed a machine-learning-based approach that distinguishes the most important correlated features amongst patients’ electronic clinical records. The SelectKBest function was applied with chi-squared statistical method to determine the most important features, and then feature engineering method has been applied to create new features correlated strongly in order to train machine learning models and obtain promising results. Optimised hyperparameter classification algorithms SVM, KNN, Decision Tree, Random Forest, and Logistic Regression were used to train two different datasets. The first dataset, called Cleveland, consisted of 303 records. The second dataset, which was used for predicting HF, consisted of 299 records. Experimental results showed that the Random Forest algorithm achieved accuracy, precision, recall, and F1 scores of 95%, 97.62%, 95.35%, and 96.47%, respectively, during the test phase for the second dataset. The same algorithm achieved accuracy scores of 100% for the first dataset and 97.68% for the second dataset, while 100% precision, recall, and F1 scores were reached for both datasets.


Author(s):  
Cândida Fonseca ◽  
Paulo Bettencourt ◽  
Dulce Brito ◽  
Helena Febra ◽  
Álvaro Pereira ◽  
...  

2021 ◽  
Vol 20 (1) ◽  
Author(s):  
Antonio Ceriello ◽  
Doina Catrinoiu ◽  
Chanchal Chandramouli ◽  
Francesco Cosentino ◽  
Annique Cornelia Dombrowsky ◽  
...  

AbstractType 2 diabetes is one of the most relevant risk factors for heart failure, the prevalence of which is increasing worldwide. The aim of the review is to highlight the current perspectives of the pathophysiology of heart failure as it pertains to type 2 diabetes. This review summarizes the proposed mechanistic bases, explaining the myocardial damage induced by diabetes-related stressors and other risk factors, i.e., cardiomyopathy in type 2 diabetes. We highlight the complex pathology of individuals with type 2 diabetes, including the relationship with chronic kidney disease, metabolic alterations, and heart failure. We also discuss the current criteria used for heart failure diagnosis and the gold standard screening tools for individuals with type 2 diabetes. Currently approved pharmacological therapies with primary use in type 2 diabetes and heart failure, and the treatment-guiding role of NT-proBNP are also presented. Finally, the influence of the presence of type 2 diabetes as well as heart failure on COVID-19 severity is briefly discussed.


2021 ◽  
Vol 2021 ◽  
pp. 1-8
Author(s):  
Lian Chen ◽  
Huiping Yu ◽  
Yupeng Huang ◽  
Hongyan Jin

Usually, heart failure occurs when heart-related diseases are developed and continue to deteriorate veins and arteries. Heart failure is the final stage of heart disease, and it has become an important medical problem, particularly among the aging population. In medical diagnosis and treatment, the examination of heart failure contains various indicators such as electrocardiogram. It is one of the relatively common ways to collect heart failure or attack related information and is also used as a reference indicator for doctors. Electrocardiogram indicates the potential activity of patient’s heart and directly reflects the changes in it. In this paper, a deep learning-based diagnosis system is presented for the early detection of heart failure particularly in elderly patients. For this purpose, we have used two datasets, Physio-Bank and MIMIC-III, which are publicly available, to extract ECG signals and thoroughly examine heart failure. Initially, a heart failure diagnosis model which is based on attention convolutional neural network (CBAM-CNN) is proposed to automatically extract features. Additionally, attention module adaptively learns the characteristics of local features and efficiently extracts the complex features of the ECG signal to perform classification diagnosis. To verify the exceptional performance of the proposed network model, various experiments were carried out in the realistic environment of hospitals. Influence of signal preprocessing on the performance of model is also discussed. These results show that the proposed CBAM-CNN model performance is better for both classifications of ECG signals. Likewise, the CBAM-CNN model is sensitive to noise, and its accuracy is effectively improved as soon as signal is refined.


2021 ◽  
Author(s):  
Theofilos G. Papadopoulos ◽  
Daphni Plati ◽  
Evanthia E. Tripoliti ◽  
Yorgos Goletsis ◽  
Katerina K. Naka ◽  
...  

Diagnostics ◽  
2021 ◽  
Vol 11 (10) ◽  
pp. 1863
Author(s):  
Dafni K. Plati ◽  
Evanthia E. Tripoliti ◽  
Aris Bechlioulis ◽  
Aidonis Rammos ◽  
Iliada Dimou ◽  
...  

The aim of this study was to address chronic heart failure (HF) diagnosis with the application of machine learning (ML) approaches. In the present study, we simulated the procedure that is followed in clinical practice, as the models we built are based on various combinations of feature categories, e.g., clinical features, echocardiogram, and laboratory findings. We also investigated the incremental value of each feature type. The total number of subjects utilized was 422. An ML approach is proposed, comprising of feature selection, handling class imbalance, and classification steps. The results for HF diagnosis were quite satisfactory with a high accuracy (91.23%), sensitivity (93.83%), and specificity (89.62%) when features from all categories were utilized. The results remained quite high, even in cases where single feature types were employed.


2021 ◽  
Vol 42 (Supplement_1) ◽  
Author(s):  
C Coorey ◽  
O Tang ◽  
J.Y.H Yang ◽  
G Figtree

Abstract Background There is emerging evidence that the pathophysiological mechanisms of heart failure are associated with alterations in serum metabolites. Such metabolomic signatures may be useful for heart failure diagnosis, stratification and prognosis. Purpose To evaluate the utility of including metabolomic biomarkers in addition to traditional cardiac biomarkers in a machine learning prediction model of heart failure diagnosis in the well-characterised Canagliflozin Cardiovascular Assessment Study (CANVAS) cohort. Methods A subgroup of the CANVAS/CANVAS-R study cohort was analysed. 101 metabolites in plasma were measured by HPLC (HILIC)-mass spectrometry. A 10-times 5-fold cross-validated support vector machine model with radial basis kernel function was constructed to predict heart failure diagnosis using traditional biomarkers alone and using the combination of traditional biomarkers and metabolomic biomarkers. Model performance and variable importance were both evaluated by area under the curve (AUC) of the receiver operating characteristics (ROC) curve. Results are shown as mean ± standard deviation. Results 967 patients (of which 402 patients had heart failure) were included in the analysis with 341 females, mean age 63±8 years and mean body mass index (BMI) 33±5 kg/m2. All patients had diabetes mellitus with mean HbA1c 8.2±0.9%. The prediction model based on only traditional biomarkers had mean AUC 72±3% and the prediction model based on both traditional biomarkers and metabolomic biomarkers had mean AUC 80±3%. The top metabolomic biomarkers for predicting heart failure were threonine, L-homoserine, creatine and deoxyadenosine. Conclusion Metabolomic biomarkers improved diagnostic performance of a heart failure prediction model and captured variation not encompassed by traditional cardiac biomarkers. FUNDunding Acknowledgement Type of funding sources: Private company. Main funding source(s): Janssen Research and Development


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