Machine learning outperforms existing non-invasive tests as screening tool for liver fibrosis in the general population

2020 ◽  
Vol 73 ◽  
pp. S72
Author(s):  
Miquel Serra-Burriel ◽  
Isabel Graupera ◽  
Maja Thiele ◽  
Llorenç Caballeria ◽  
Dominique Roulot ◽  
...  
2020 ◽  
Vol 10 (1) ◽  
Author(s):  
Lorenzo Dall’Olio ◽  
Nico Curti ◽  
Daniel Remondini ◽  
Yosef Safi Harb ◽  
Folkert W. Asselbergs ◽  
...  

AbstractPhotoplethysmography (PPG) measured by smartphone has the potential for a large scale, non-invasive, and easy-to-use screening tool. Vascular aging is linked to increased arterial stiffness, which can be measured by PPG. We investigate the feasibility of using PPG to predict healthy vascular aging (HVA) based on two approaches: machine learning (ML) and deep learning (DL). We performed data preprocessing, including detrending, demodulating, and denoising on the raw PPG signals. For ML, ridge penalized regression has been applied to 38 features extracted from PPG, whereas for DL several convolutional neural networks (CNNs) have been applied to the whole PPG signals as input. The analysis has been conducted using the crowd-sourced Heart for Heart data. The prediction performance of ML using two features (AUC of 94.7%) – the a wave of the second derivative PPG and tpr, including four covariates, sex, height, weight, and smoking – was similar to that of the best performing CNN, 12-layer ResNet (AUC of 95.3%). Without having the heavy computational cost of DL, ML might be advantageous in finding potential biomarkers for HVA prediction. The whole workflow of the procedure is clearly described, and open software has been made available to facilitate replication of the results.


2020 ◽  
Vol 40 (6) ◽  
pp. 1303-1315 ◽  
Author(s):  
Ki‐Chul Sung ◽  
Michael P. Johnston ◽  
Mi Y. Lee ◽  
Christopher D. Byrne

2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Xiangke Pu ◽  
Danni Deng ◽  
Chaoyi Chu ◽  
Tianle Zhou ◽  
Jianhong Liu

AbstractChronic HBV infection, the main cause of liver cirrhosis and hepatocellular carcinoma, has become a global health concern. Machine learning algorithms are particularly adept at analyzing medical phenomenon by capturing complex and nonlinear relationships in clinical data. Our study proposed a predictive model on the basis of 55 routine laboratory and clinical parameters by machine learning algorithms as a novel non-invasive method for liver fibrosis diagnosis. The model was further evaluated on the accuracy and rationality and proved to be highly accurate and efficient for the prediction of HBV-related fibrosis. In conclusion, we suggested a potential combination of high-dimensional clinical data and machine learning predictive algorithms for the liver fibrosis diagnosis.


2010 ◽  
Vol 10 (1) ◽  
Author(s):  
Thierry Poynard ◽  
Pascal Lebray ◽  
Patrick Ingiliz ◽  
Anne Varaut ◽  
Brigitte Varsat ◽  
...  

2021 ◽  
pp. 46-47
Author(s):  
Deepa H S ◽  
Rupam Das

Aim: present study was planned to evaluate Lyfas capability to detect sleep deciency and psychological and physiological effects of sleep deciency. A retrospective observational st Materials and methods: udy was conducted in patients who have undergone smart phone based screening tool which is a Non-invasive digital biomarker ie Lyfas. This study included 68 patients aged 18 years or older from both genders who had taken Lyfas tests in 2 months study period (Nov 2020 to Dec 2020) and Lyfas detected sleep deciency in the test and further in the online consultation patient conrmed whether they are having sleep deciency or not. Also physiological and psychological effects of sleep deciency on human body were also evaluated. Of the 68 patients, 50 were male and 18 Results: were female. Out of 68 patients in which Lyfas had detected sleep deciency, majority of the patients (n=52, 76 %) had conrmed sleep deciency during subsequent online consultation. Results of our study shows that Lyfas can be use Conclusion: d to detect sleep deciency and its ill effects in general population.


2020 ◽  
Author(s):  
Lorenzo Dall’Olio ◽  
Nico Curti ◽  
Daniel Remondini ◽  
Yosef Safi Harb ◽  
Folkert W. Asselbergs ◽  
...  

ABSTRACTPhotoplethysmography (PPG) measured by smartphone has the potential for a large scale, non-invasive, and easy-to-use screening tool. Vascular aging is linked to increased arterial stiffness, which can be measured by PPG. We investigate the feasibility of using PPG to predict healthy vascular aging (HVA) based on two approaches: machine learning (ML) and deep learning (DL). We performed data preprocessing including detrending, demodulating and denoising on the raw PPG signals. For ML, ridge penalized regression has been applied to 38 features extracted from PPG, whereas for DL several convolutional neural networks (CNNs) have been applied to the whole PPG signals as input. The analysis has been conducted using the crowd-sourced Heart for Heart data. The prediction performance of ML using two features (AUC of 94.7%) – the a wave of the second derivative PPG and tpr, including four covariates, sex, height, weight, and smoking – was similar to that of the best performing CNN, 12-layer ResNet (AUC of 95.3%). Without having the heavy computational cost of DL, ML might be advantageous in finding potential biomarkers for HVA prediction. The whole workflow of the procedure is clearly described, and open software has been made available to facilitate replication of the results.


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