Portal hypertension is a complex medical condition characterized by elevated blood
pressure in the portal venous system. The conventional diagnosis of such disease often involves
invasive procedures such as liver biopsy, endoscopy, or imaging techniques with contrast agents,
which can be uncomfortable for patients and carry inherent risks. This study presents a deep neural
network method in support of the non-invasive diagnosis of portal hypertension in patients with
chronic liver diseases. The proposed method utilizes readily available clinical data, thus eliminating
the need for invasive procedures. A dataset composed of standard laboratory parameters is used to
train and validate the deep neural network regressor. The experimental results exhibit reasonable
performance in distinguishing patients with portal hypertension from healthy individuals. Such
performances may be improved by using larger datasets of high quality. These findings suggest that
deep neural networks can serve as useful auxiliary diagnostic tools, aiding healthcare professionals
in making timely and accurate decisions for patients suspected of having portal hypertension.
Dettaglio pubblicazione
2023, HEALTHCARE, Pages - (volume: 11)
Deep Neural Network Regression to Assist Non-Invasive Diagnosis of Portal Hypertension (01a Articolo in rivista)
Baldisseri Federico, Wrona Andrea, Menegatti Danilo, Pietrabissa Antonio, Battilotti Stefano, Califano Claudia, Cristofaro Andrea, Di Giamberardino Paolo, Facchinei Francisco, Palagi Laura, Giuseppi Alessandro, Delli Priscoli Francesco
Gruppo di ricerca: Networked Systems
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