Classification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case study

Abstract The fraction of red blood cells adopting a specific motion under low shear flow is a promising inexpensive marker for monitoring the clinical status of patients with sickle cell disease. Its high-throughput measurement relies on the video analysis of thousands of cell motions for each blood...

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Published in:Scientific Reports
Main Authors: Maxime Darrin, Ashwin Samudre, Maxime Sahun, Scott Atwell, Catherine Badens, Anne Charrier, Emmanuèle Helfer, Annie Viallat, Vincent Cohen-Addad, Sophie Giffard-Roisin
Format: Article
Language:English
Published: Nature Portfolio 2023-01-01
Online Access:https://doi.org/10.1038/s41598-023-27718-w
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author Maxime Darrin
Ashwin Samudre
Maxime Sahun
Scott Atwell
Catherine Badens
Anne Charrier
Emmanuèle Helfer
Annie Viallat
Vincent Cohen-Addad
Sophie Giffard-Roisin
author_facet Maxime Darrin
Ashwin Samudre
Maxime Sahun
Scott Atwell
Catherine Badens
Anne Charrier
Emmanuèle Helfer
Annie Viallat
Vincent Cohen-Addad
Sophie Giffard-Roisin
author_sort Maxime Darrin
collection DOAJ
container_title Scientific Reports
description Abstract The fraction of red blood cells adopting a specific motion under low shear flow is a promising inexpensive marker for monitoring the clinical status of patients with sickle cell disease. Its high-throughput measurement relies on the video analysis of thousands of cell motions for each blood sample to eliminate a large majority of unreliable samples (out of focus or overlapping cells) and discriminate between tank-treading and flipping motion, characterizing highly and poorly deformable cells respectively. Moreover, these videos are of different durations (from 6 to more than 100 frames). We present a two-stage end-to-end machine learning pipeline able to automatically classify cell motions in videos with a high class imbalance. By extending, comparing, and combining two state-of-the-art methods, a convolutional neural network (CNN) model and a recurrent CNN, we are able to automatically discard 97% of the unreliable cell sequences (first stage) and classify highly and poorly deformable red cell sequences with 97% accuracy and an F1-score of 0.94 (second stage). Dataset and codes are publicly released for the community.
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spelling doaj-art-e91053b99e3249878ff2064cfbee96332025-08-19T21:34:54ZengNature PortfolioScientific Reports2045-23222023-01-0113111210.1038/s41598-023-27718-wClassification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case studyMaxime Darrin0Ashwin Samudre1Maxime Sahun2Scott Atwell3Catherine Badens4Anne Charrier5Emmanuèle Helfer6Annie Viallat7Vincent Cohen-Addad8Sophie Giffard-Roisin9ENS LyonAix Marseille Univ, CNRS, CINAMAix Marseille Univ, CNRS, CINAMAix Marseille Univ, CNRS, CINAMAix Marseille University, INSERM, Marseille Medical Genetics (MMG)Aix Marseille Univ, CNRS, CINAMAix Marseille Univ, CNRS, CINAMAix Marseille Univ, CNRS, CINAMSorbonne Universités, UPMC Univ Paris 06, CNRS, LIP6Univ. Grenoble Alpes, Univ. Savoie Mont Blanc, CNRS, IRD, IFSTTAR, ISTerreAbstract The fraction of red blood cells adopting a specific motion under low shear flow is a promising inexpensive marker for monitoring the clinical status of patients with sickle cell disease. Its high-throughput measurement relies on the video analysis of thousands of cell motions for each blood sample to eliminate a large majority of unreliable samples (out of focus or overlapping cells) and discriminate between tank-treading and flipping motion, characterizing highly and poorly deformable cells respectively. Moreover, these videos are of different durations (from 6 to more than 100 frames). We present a two-stage end-to-end machine learning pipeline able to automatically classify cell motions in videos with a high class imbalance. By extending, comparing, and combining two state-of-the-art methods, a convolutional neural network (CNN) model and a recurrent CNN, we are able to automatically discard 97% of the unreliable cell sequences (first stage) and classify highly and poorly deformable red cell sequences with 97% accuracy and an F1-score of 0.94 (second stage). Dataset and codes are publicly released for the community.https://doi.org/10.1038/s41598-023-27718-w
spellingShingle Maxime Darrin
Ashwin Samudre
Maxime Sahun
Scott Atwell
Catherine Badens
Anne Charrier
Emmanuèle Helfer
Annie Viallat
Vincent Cohen-Addad
Sophie Giffard-Roisin
Classification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case study
title Classification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case study
title_full Classification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case study
title_fullStr Classification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case study
title_full_unstemmed Classification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case study
title_short Classification of red cell dynamics with convolutional and recurrent neural networks: a sickle cell disease case study
title_sort classification of red cell dynamics with convolutional and recurrent neural networks a sickle cell disease case study
url https://doi.org/10.1038/s41598-023-27718-w
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