Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative Model
The fruit fly compound eye is a premier experimental system for modeling human neurodegenerative diseases. The disruption of the retinal geometry has been historically assessed using time-consuming and poorly reliable techniques such as histology or pseudopupil manual counting. Recent semiautomated...
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doaj-b36f1ac8e1694298ae587a0ce2a2b48a2020-11-25T03:00:39ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2020-06-011410.3389/fnins.2020.00516536941Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative ModelSergio Diez-Hermano0Sergio Diez-Hermano1Maria D. Ganfornina2Esteban Vegas-Lozano3Diego Sanchez4Instituto de Biologia y Genetica Molecular-Departamento de Bioquimica y Biologia Molecular y Fisiologia, Universidad de Valladolid-CSIC, Valladolid, SpainDepartamento de Biodiversidad, Ecologia y Evolucion, Unidad de Biomatematicas, Universidad Complutense, Madrid, SpainInstituto de Biologia y Genetica Molecular-Departamento de Bioquimica y Biologia Molecular y Fisiologia, Universidad de Valladolid-CSIC, Valladolid, SpainDepartamento de Genetica, Microbiologia y Estadistica, Universidad de Barcelona, Barcelona, SpainInstituto de Biologia y Genetica Molecular-Departamento de Bioquimica y Biologia Molecular y Fisiologia, Universidad de Valladolid-CSIC, Valladolid, SpainThe fruit fly compound eye is a premier experimental system for modeling human neurodegenerative diseases. The disruption of the retinal geometry has been historically assessed using time-consuming and poorly reliable techniques such as histology or pseudopupil manual counting. Recent semiautomated quantification approaches rely either on manual region-of-interest delimitation or engineered features to estimate the extent of degeneration. This work presents a fully automated classification pipeline of bright-field images based on orientated gradient descriptors and machine learning techniques. An initial region-of-interest extraction is performed, applying morphological kernels and Euclidean distance-to-centroid thresholding. Image classification algorithms are trained on these regions (support vector machine, decision trees, random forest, and convolutional neural network), and their performance is evaluated on independent, unseen datasets. The combinations of oriented gradient + gaussian kernel Support Vector Machine [0.97 accuracy and 0.98 area under the curve (AUC)] and fine-tuned pre-trained convolutional neural network (0.98 accuracy and 0.99 AUC) yielded the best results overall. The proposed method provides a robust quantification framework that can be generalized to address the loss of regularity in biological patterns similar to the Drosophila eye surface and speeds up the processing of large sample batches.https://www.frontiersin.org/article/10.3389/fnins.2020.00516/fullDrosophila melanogasterneurodegenerationrough eye phenotypespinocerebellar ataxiamachine learningclassification |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sergio Diez-Hermano Sergio Diez-Hermano Maria D. Ganfornina Esteban Vegas-Lozano Diego Sanchez |
spellingShingle |
Sergio Diez-Hermano Sergio Diez-Hermano Maria D. Ganfornina Esteban Vegas-Lozano Diego Sanchez Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative Model Frontiers in Neuroscience Drosophila melanogaster neurodegeneration rough eye phenotype spinocerebellar ataxia machine learning classification |
author_facet |
Sergio Diez-Hermano Sergio Diez-Hermano Maria D. Ganfornina Esteban Vegas-Lozano Diego Sanchez |
author_sort |
Sergio Diez-Hermano |
title |
Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative Model |
title_short |
Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative Model |
title_full |
Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative Model |
title_fullStr |
Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative Model |
title_full_unstemmed |
Machine Learning Representation of Loss of Eye Regularity in a Drosophila Neurodegenerative Model |
title_sort |
machine learning representation of loss of eye regularity in a drosophila neurodegenerative model |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neuroscience |
issn |
1662-453X |
publishDate |
2020-06-01 |
description |
The fruit fly compound eye is a premier experimental system for modeling human neurodegenerative diseases. The disruption of the retinal geometry has been historically assessed using time-consuming and poorly reliable techniques such as histology or pseudopupil manual counting. Recent semiautomated quantification approaches rely either on manual region-of-interest delimitation or engineered features to estimate the extent of degeneration. This work presents a fully automated classification pipeline of bright-field images based on orientated gradient descriptors and machine learning techniques. An initial region-of-interest extraction is performed, applying morphological kernels and Euclidean distance-to-centroid thresholding. Image classification algorithms are trained on these regions (support vector machine, decision trees, random forest, and convolutional neural network), and their performance is evaluated on independent, unseen datasets. The combinations of oriented gradient + gaussian kernel Support Vector Machine [0.97 accuracy and 0.98 area under the curve (AUC)] and fine-tuned pre-trained convolutional neural network (0.98 accuracy and 0.99 AUC) yielded the best results overall. The proposed method provides a robust quantification framework that can be generalized to address the loss of regularity in biological patterns similar to the Drosophila eye surface and speeds up the processing of large sample batches. |
topic |
Drosophila melanogaster neurodegeneration rough eye phenotype spinocerebellar ataxia machine learning classification |
url |
https://www.frontiersin.org/article/10.3389/fnins.2020.00516/full |
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