Literature DB >> 33119516

Clustering-Based Dual Deep Learning Architecture for Detecting Red Blood Cells in Malaria Diagnostic Smears.

Yasmin M Kassim, Kannappan Palaniappan, Feng Yang, Mahdieh Poostchi, Nila Palaniappan, Richard J Maude, Sameer Antani, Stefan Jaeger.   

Abstract

Computer-assisted algorithms have become a mainstay of biomedical applications to improve accuracy and reproducibility of repetitive tasks like manual segmentation and annotation. We propose a novel pipeline for red blood cell detection and counting in thin blood smear microscopy images, named RBCNet, using a dual deep learning architecture. RBCNet consists of a U-Net first stage for cell-cluster or superpixel segmentation, followed by a second refinement stage Faster R-CNN for detecting small cell objects within the connected component clusters. RBCNet uses cell clustering instead of region proposals, which is robust to cell fragmentation, is highly scalable for detecting small objects or fine scale morphological structures in very large images, can be trained using non-overlapping tiles, and during inference is adaptive to the scale of cell-clusters with a low memory footprint. We tested our method on an archived collection of human malaria smears with nearly 200,000 labeled cells across 965 images from 193 patients, acquired in Bangladesh, with each patient contributing five images. Cell detection accuracy using RBCNet was higher than 97 %. The novel dual cascade RBCNet architecture provides more accurate cell detections because the foreground cell-cluster masks from U-Net adaptively guide the detection stage, resulting in a notably higher true positive and lower false alarm rates, compared to traditional and other deep learning methods. The RBCNet pipeline implements a crucial step towards automated malaria diagnosis.

Entities:  

Year:  2021        PMID: 33119516      PMCID: PMC8127616          DOI: 10.1109/JBHI.2020.3034863

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   5.772


  18 in total

Review 1.  Deep learning in neural networks: an overview.

Authors:  Jürgen Schmidhuber
Journal:  Neural Netw       Date:  2014-10-13

2.  Sensitivity of Cross-Trained Deep CNNs for Retinal Vessel Extraction.

Authors:  Yasmin M Kassim; Richard J Maude; Kannappan Palaniappan
Journal:  Annu Int Conf IEEE Eng Med Biol Soc       Date:  2018-07

Review 3.  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

4.  Automated red blood cells extraction from holographic images using fully convolutional neural networks.

Authors:  Faliu Yi; Inkyu Moon; Bahram Javidi
Journal:  Biomed Opt Express       Date:  2017-09-12       Impact factor: 3.732

5.  Deep Learning for Smartphone-Based Malaria Parasite Detection in Thick Blood Smears.

Authors:  Feng Yang; Mahdieh Poostchi; Hang Yu; Zhou Zhou; Kamolrat Silamut; Jian Yu; Richard J Maude; Stefan Jaeger; Sameer Antani
Journal:  IEEE J Biomed Health Inform       Date:  2019-09-23       Impact factor: 5.772

6.  Brain tumor segmentation with Deep Neural Networks.

Authors:  Mohammad Havaei; Axel Davy; David Warde-Farley; Antoine Biard; Aaron Courville; Yoshua Bengio; Chris Pal; Pierre-Marc Jodoin; Hugo Larochelle
Journal:  Med Image Anal       Date:  2016-05-19       Impact factor: 8.545

7.  U-Net: deep learning for cell counting, detection, and morphometry.

Authors:  Thorsten Falk; Dominic Mai; Robert Bensch; Özgün Çiçek; Ahmed Abdulkadir; Yassine Marrakchi; Anton Böhm; Jan Deubner; Zoe Jäckel; Katharina Seiwald; Alexander Dovzhenko; Olaf Tietz; Cristina Dal Bosco; Sean Walsh; Deniz Saltukoglu; Tuan Leng Tay; Marco Prinz; Klaus Palme; Matias Simons; Ilka Diester; Thomas Brox; Olaf Ronneberger
Journal:  Nat Methods       Date:  2018-12-17       Impact factor: 28.547

8.  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

9.  Malaria parasite detection and cell counting for human and mouse using thin blood smear microscopy.

Authors:  Mahdieh Poostchi; Ilker Ersoy; Katie McMenamin; Emile Gordon; Nila Palaniappan; Susan Pierce; Richard J Maude; Abhisheka Bansal; Prakash Srinivasan; Louis Miller; Kannappan Palaniappan; George Thoma; Stefan Jaeger
Journal:  J Med Imaging (Bellingham)       Date:  2018-12-12

10.  Statistical dynamics of flowing red blood cells by morphological image processing.

Authors:  John M Higgins; David T Eddington; Sangeeta N Bhatia; L Mahadevan
Journal:  PLoS Comput Biol       Date:  2009-02-13       Impact factor: 4.475

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  3 in total

1.  DMNet: Dual-Stream Marker Guided Deep Network for Dense Cell Segmentation and Lineage Tracking.

Authors:  Rina Bao; Noor M Al-Shakarji; Filiz Bunyak; Kannappan Palaniappan
Journal:  IEEE Int Conf Comput Vis Workshops       Date:  2021-11-24

2.  Fluid and protein exchange in microvascular networks: Importance of modelling heterogeneity in geometrical and biophysical properties.

Authors:  Giovanna Guidoboni; Nicholas M Marazzi; Joshua Fraser; Riccardo Sacco; Kannappan Palaniappan; Virginia H Huxley
Journal:  J Physiol       Date:  2021-10-10       Impact factor: 6.228

Review 3.  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 in total

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