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Mobile microscopy and telemedicine platform assisted by deep learning for quantification of Trichuris trichiura infection

View ORCID ProfileElena Dacal, View ORCID ProfileDavid Bermejo-Peláez, Lin Lin, Elisa Álamo, Daniel Cuadrado, Álvaro Martínez, Adriana Mousa, María Postigo, Alicia Soto, Endre Sukosd, Alexander Vladimirov, Charles Mwandawiro, Paul Gichuki, Nana Aba Williams, José Muñoz, Stella Kepha, View ORCID ProfileMiguel Luengo-Oroz
doi: https://doi.org/10.1101/2021.01.19.426683
Elena Dacal
aSpotlab, Madrid, Spain
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  • For correspondence: elena@spotlab.org david@spotlab.org lin@spotlab.org miguel@spotlab.org
David Bermejo-Peláez
aSpotlab, Madrid, Spain
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  • For correspondence: elena@spotlab.org david@spotlab.org lin@spotlab.org miguel@spotlab.org
Lin Lin
aSpotlab, Madrid, Spain
bBiomedical Image Technologies, ETSI Telecomunicación, Universidad Politécnica de Madrid, Madrid, Spain
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  • For correspondence: elena@spotlab.org david@spotlab.org lin@spotlab.org miguel@spotlab.org
Elisa Álamo
aSpotlab, Madrid, Spain
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Daniel Cuadrado
aSpotlab, Madrid, Spain
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Álvaro Martínez
aSpotlab, Madrid, Spain
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Adriana Mousa
aSpotlab, Madrid, Spain
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María Postigo
aSpotlab, Madrid, Spain
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Alicia Soto
aSpotlab, Madrid, Spain
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Endre Sukosd
aSpotlab, Madrid, Spain
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Alexander Vladimirov
aSpotlab, Madrid, Spain
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Charles Mwandawiro
cEastern and Southern Africa Center for International Parasite Control (ESACIPAC), Kenya Medical Research Institute (KEMRI)
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Paul Gichuki
cEastern and Southern Africa Center for International Parasite Control (ESACIPAC), Kenya Medical Research Institute (KEMRI)
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Nana Aba Williams
dBarcelona Institute for Global Health (ISGlobal), Hospital Clínic-Universitat de Barcelona, Barcelona, Spain
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José Muñoz
dBarcelona Institute for Global Health (ISGlobal), Hospital Clínic-Universitat de Barcelona, Barcelona, Spain
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Stella Kepha
cEastern and Southern Africa Center for International Parasite Control (ESACIPAC), Kenya Medical Research Institute (KEMRI)
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Miguel Luengo-Oroz
aSpotlab, Madrid, Spain
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  • ORCID record for Miguel Luengo-Oroz
  • For correspondence: elena@spotlab.org david@spotlab.org lin@spotlab.org miguel@spotlab.org
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Abstract

Soil-transmitted helminths (STH) are the most prevalent pathogens among the group of neglected tropical diseases (NTDs). Kato-Katz technique is the diagnosis method recommended by WHO and although is generally more sensitive than other microscopic methods in high transmission settings, it often presents a decreased sensitivity in low transmission settings and it is labour intensive. Digitizing the samples could provide a solution which allows to store the samples in a digital database and perform remote analysis. Artificial intelligence methods based on digitized samples can support diagnostics efforts by support diagnostics efforts by performing an automatic and objective quantification of disease infection.

In this work, we propose an end-to-end pipeline for microscopy image digitization and automatic analysis of digitized images of soil-transmitted helminths. Our solution includes (1) a digitalization system based on a mobile app that digitizes the microscope samples using a low-cost 3D-printed microscope adapter, (2) a telemedicine platform for remote analysis and labelling and (3) novel deep learning algorithms for automatic assessment and quantification of parasitological infection of STH.

This work has been evaluated by comparing the STH quantification using both a manual remote analysis based on the digitized images and the AI-assisted quantification against the reference method based on conventional microscopy. The deep learning algorithm has been trained and tested on 41 slides of stool samples containing 949 eggs from 6 different subjects using a cross-validation strategy obtaining a mean precision of 98,44% and mean recall of 80,94%. The results also proved the potential of generalization capability of the method at identifying different types of helminth eggs.

In conclusion, this work has presented a comprehensive pipeline using smartphone-based microscopy integrated with a telemedicine platform for automatic image analysis and quantification of STH infection using artificial intelligence models.

Competing Interest Statement

ED, DBP, LL, EA, DC, AMa, AMo, MP, AS, ES, AV and MLO work for Spotlab. The rest of the authors declare no competing interests.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted January 19, 2021.
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Mobile microscopy and telemedicine platform assisted by deep learning for quantification of Trichuris trichiura infection
Elena Dacal, David Bermejo-Peláez, Lin Lin, Elisa Álamo, Daniel Cuadrado, Álvaro Martínez, Adriana Mousa, María Postigo, Alicia Soto, Endre Sukosd, Alexander Vladimirov, Charles Mwandawiro, Paul Gichuki, Nana Aba Williams, José Muñoz, Stella Kepha, Miguel Luengo-Oroz
bioRxiv 2021.01.19.426683; doi: https://doi.org/10.1101/2021.01.19.426683
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Mobile microscopy and telemedicine platform assisted by deep learning for quantification of Trichuris trichiura infection
Elena Dacal, David Bermejo-Peláez, Lin Lin, Elisa Álamo, Daniel Cuadrado, Álvaro Martínez, Adriana Mousa, María Postigo, Alicia Soto, Endre Sukosd, Alexander Vladimirov, Charles Mwandawiro, Paul Gichuki, Nana Aba Williams, José Muñoz, Stella Kepha, Miguel Luengo-Oroz
bioRxiv 2021.01.19.426683; doi: https://doi.org/10.1101/2021.01.19.426683

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