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Main Authors: Thomas, Sarina, Cao, Qing, Novikova, Anna, Kulikova, Daria, Ben-Yosef, Guy
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.23744
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author Thomas, Sarina
Cao, Qing
Novikova, Anna
Kulikova, Daria
Ben-Yosef, Guy
author_facet Thomas, Sarina
Cao, Qing
Novikova, Anna
Kulikova, Daria
Ben-Yosef, Guy
contents Ejection fraction (EF) of the left ventricle (LV) is considered as one of the most important measurements for diagnosing acute heart failure and can be estimated during cardiac ultrasound acquisition. While recent successes in deep learning research successfully estimate EF values, the proposed models often lack an explanation for the prediction. However, providing clear and intuitive explanations for clinical measurement predictions would increase the trust of cardiologists in these models. In this paper, we explore predicting EF measurements with Natural Language Explanation (NLE). We propose a model that in a single forward pass combines estimation of the LV contour over multiple frames, together with a set of modules and routines for computing various motion and shape attributes that are associated with ejection fraction. It then feeds the attributes into a large language model to generate text that helps to explain the network's outcome in a human-like manner. We provide experimental evaluation of our explanatory output, as well as EF prediction, and show that our model can provide EF comparable to state-of-the-art together with meaningful and accurate natural language explanation to the prediction. The project page can be found at https://github.com/guybenyosef/EchoNarrator .
format Preprint
id arxiv_https___arxiv_org_abs_2410_23744
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle EchoNarrator: Generating natural text explanations for ejection fraction predictions
Thomas, Sarina
Cao, Qing
Novikova, Anna
Kulikova, Daria
Ben-Yosef, Guy
Computer Vision and Pattern Recognition
Ejection fraction (EF) of the left ventricle (LV) is considered as one of the most important measurements for diagnosing acute heart failure and can be estimated during cardiac ultrasound acquisition. While recent successes in deep learning research successfully estimate EF values, the proposed models often lack an explanation for the prediction. However, providing clear and intuitive explanations for clinical measurement predictions would increase the trust of cardiologists in these models. In this paper, we explore predicting EF measurements with Natural Language Explanation (NLE). We propose a model that in a single forward pass combines estimation of the LV contour over multiple frames, together with a set of modules and routines for computing various motion and shape attributes that are associated with ejection fraction. It then feeds the attributes into a large language model to generate text that helps to explain the network's outcome in a human-like manner. We provide experimental evaluation of our explanatory output, as well as EF prediction, and show that our model can provide EF comparable to state-of-the-art together with meaningful and accurate natural language explanation to the prediction. The project page can be found at https://github.com/guybenyosef/EchoNarrator .
title EchoNarrator: Generating natural text explanations for ejection fraction predictions
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.23744