Differentiable Deconvolution for Improved Stroke Perfusion Analysis

03/31/2021
by   Ezequiel de la Rosa, et al.
0

Perfusion imaging is the current gold standard for acute ischemic stroke analysis. It allows quantification of the salvageable and non-salvageable tissue regions (penumbra and core areas respectively). In clinical settings, the singular value decomposition (SVD) deconvolution is one of the most accepted and used approaches for generating interpretable and physically meaningful maps. Though this method has been widely validated in experimental and clinical settings, it might produce suboptimal results because the chosen inputs to the model cannot guarantee optimal performance. For the most critical input, the arterial input function (AIF), it is still controversial how and where it should be chosen even though the method is very sensitive to this input. In this work we propose an AIF selection approach that is optimized for maximal core lesion segmentation performance. The AIF is regressed by a neural network optimized through a differentiable SVD deconvolution, aiming to maximize core lesion segmentation agreement with ground truth data. To our knowledge, this is the first work exploiting a differentiable deconvolution model with neural networks. We show that our approach is able to generate AIFs without any manual annotation, and hence avoiding manual rater's influences. The method achieves manual expert performance in the ISLES18 dataset. We conclude that the methodology opens new possibilities for improving perfusion imaging quantification with deep neural networks.

READ FULL TEXT
research
10/04/2020

AIFNet: Automatic Vascular Function Estimation for Perfusion Analysis Using Deep Learning

Perfusion imaging is crucial in acute ischemic stroke for quantifying th...
research
01/15/2021

Neural Network-derived perfusion maps: a Model-free approach to computed tomography perfusion in patients with acute ischemic stroke

Purpose: In this study we investigate whether a Convolutional Neural Net...
research
11/17/2022

Enabling Collagen Quantification on HE-stained Slides Through Stain Deconvolution and Restained HE-HES

In histology, the presence of collagen in the extra-cellular matrix has ...
research
07/10/2020

Joint Blind Deconvolution and Robust Principal Component Analysis for Blood Flow Estimation in Medical Ultrasound Imaging

This paper addresses the problem of high-resolution Doppler blood flow e...
research
06/02/2020

Learning to do multiframe blind deconvolution unsupervisedly

Observation from ground based telescopes are affected by the presence of...
research
03/18/2022

Multi-input segmentation of damaged brain in acute ischemic stroke patients using slow fusion with skip connection

Time is a fundamental factor during stroke treatments. A fast, automatic...
research
07/03/2014

BiofilmQuant: A Computer-Assisted Tool for Dental Biofilm Quantification

Dental biofilm is the deposition of microbial material over a tooth subs...

Please sign up or login with your details

Forgot password? Click here to reset