Literature DB >> 34137821

Multi-stage malaria parasite recognition by deep learning.

Sen Li1, Zeyu Du1, Xiangjie Meng1, Yang Zhang1.   

Abstract

MOTIVATION: Malaria, a mosquito-borne infectious disease affecting humans and other animals, is widespread in tropical and subtropical regions. Microscopy is the most common method for diagnosing the malaria parasite from stained blood smear samples. However, this technique is time consuming and must be performed by a well-trained professional, yet it remains prone to errors. Distinguishing the multiple growth stages of parasites remains an especially challenging task.
RESULTS: In this article, we develop a novel deep learning approach for the recognition of malaria parasites of various stages in blood smear images using a deep transfer graph convolutional network (DTGCN). To our knowledge, this is the first application of graph convolutional network (GCN) on multi-stage malaria parasite recognition in such images. The proposed DTGCN model is based on unsupervised learning by transferring knowledge learnt from source images that contain the discriminative morphology characteristics of multi-stage malaria parasites. This transferred information guarantees the effectiveness of the target parasite recognition. This approach first learns the identical representations from the source to establish topological correlations between source class groups and the unlabelled target samples. At this stage, the GCN is implemented to extract graph feature representations for multi-stage malaria parasite recognition. The proposed method showed higher accuracy and effectiveness in publicly available microscopic images of multi-stage malaria parasites compared to a wide range of state-of-the-art approaches. Furthermore, this method is also evaluated on a large-scale dataset of unseen malaria parasites and the Babesia dataset. AVAILABILITY: Code and dataset are available at https://github.com/senli2018/DTGCN_2021 under a MIT license.
© The Author(s) 2021. Published by Oxford University Press GigaScience.

Entities:  

Keywords:  deep learning; graph convolutional network; knowledge transfer; malaria; microscopic image analysis; multi-stage recognition

Mesh:

Year:  2021        PMID: 34137821      PMCID: PMC8210472          DOI: 10.1093/gigascience/giab040

Source DB:  PubMed          Journal:  Gigascience        ISSN: 2047-217X            Impact factor:   6.524


  10 in total

Review 1.  Malaria.

Authors:  Margaret A Phillips; Jeremy N Burrows; Christine Manyando; Rob Hooft van Huijsduijnen; Wesley C Van Voorhis; Timothy N C Wells
Journal:  Nat Rev Dis Primers       Date:  2017-08-03       Impact factor: 52.329

2.  Annotated high-throughput microscopy image sets for validation.

Authors:  Vebjorn Ljosa; Katherine L Sokolnicki; Anne E Carpenter
Journal:  Nat Methods       Date:  2012-06-28       Impact factor: 28.547

Review 3.  Computational microscopic imaging for malaria parasite detection: a systematic review.

Authors:  D K Das; R Mukherjee; C Chakraborty
Journal:  J Microsc       Date:  2015-06-05       Impact factor: 1.758

Review 4.  Image analysis and machine learning for detecting malaria.

Authors:  Mahdieh Poostchi; Kamolrat Silamut; Richard J Maude; Stefan Jaeger; George Thoma
Journal:  Transl Res       Date:  2018-01-12       Impact factor: 7.012

5.  Convolutional neural network-based malaria diagnosis from focus stack of blood smear images acquired using custom-built slide scanner.

Authors:  Gopalakrishna Pillai Gopakumar; Murali Swetha; Gorthi Sai Siva; Gorthi R K Sai Subrahmanyam
Journal:  J Biophotonics       Date:  2017-11-15       Impact factor: 3.207

Review 6.  Babesiosis.

Authors:  M J Homer; I Aguilar-Delfin; S R Telford; P J Krause; D H Persing
Journal:  Clin Microbiol Rev       Date:  2000-07       Impact factor: 26.132

7.  Pre-trained convolutional neural networks as feature extractors toward improved malaria parasite detection in thin blood smear images.

Authors:  Sivaramakrishnan Rajaraman; Sameer K Antani; Mahdieh Poostchi; Kamolrat Silamut; Md A Hossain; Richard J Maude; Stefan Jaeger; George R Thoma
Journal:  PeerJ       Date:  2018-04-16       Impact factor: 2.984

Review 8.  Relationship between Flooding and Out Break of Infectious Diseasesin Kenya: A Review of the Literature.

Authors:  Fredrick Okoth Okaka; Beneah D O Odhiambo
Journal:  J Environ Public Health       Date:  2018-10-17

9.  Transfer Learning for Toxoplasma gondii Recognition.

Authors:  Sen Li; Aijia Li; Diego Alejandro Molina Lara; Jorge Enrique Gómez Marín; Mario Juhas; Yang Zhang
Journal:  mSystems       Date:  2020-01-28       Impact factor: 6.496

10.  Multi-stage malaria parasite recognition by deep learning.

Authors:  Sen Li; Zeyu Du; Xiangjie Meng; Yang Zhang
Journal:  Gigascience       Date:  2021-06-17       Impact factor: 6.524

  10 in total
  3 in total

Review 1.  Machine Learning and Its Applications for Protozoal Pathogens and Protozoal Infectious Diseases.

Authors:  Rui-Si Hu; Abd El-Latif Hesham; Quan Zou
Journal:  Front Cell Infect Microbiol       Date:  2022-04-28       Impact factor: 6.073

Review 2.  Deep learning for microscopic examination of protozoan parasites.

Authors:  Chi Zhang; Hao Jiang; Hanlin Jiang; Hui Xi; Baodong Chen; Yubing Liu; Mario Juhas; Junyi Li; Yang Zhang
Journal:  Comput Struct Biotechnol J       Date:  2022-02-11       Impact factor: 7.271

3.  Multi-stage malaria parasite recognition by deep learning.

Authors:  Sen Li; Zeyu Du; Xiangjie Meng; Yang Zhang
Journal:  Gigascience       Date:  2021-06-17       Impact factor: 6.524

  3 in total

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