Deep Learning Based Semantic Segmentation and Quantification for MRD Biochip Images

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Date

2022

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Elsevier Sci Ltd

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Green Open Access

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Abstract

Microfluidic platforms offer prominent advantages for the early detection of cancer and monitoring the patient response to therapy. Numerous microfluidic platforms have been developed for capturing and quantifying the tumor cells integrating several readout methods. Earlier, we have developed a microfluidic platform (MRD Biochip) to capture and quantify leukemia cells. This is the first study which employs a deep learning-based segmentation to the MRD Biochip images consisting of leukemic cells, immunomagnetic beads and micropads. Implementing deep learning algorithms has two main contributions; firstly, the quantification performance of the readout method is improved for the unbalanced dataset. Secondly, unlike the previous classical computer vision -based method, it does not require any manual tuning of the parameters which resulted in a more generalized model against variations of objects in the image in terms of size, color, and noise. As a result of these benefits, the proposed system is promising for providing real time analysis for microfluidic systems. Moreover, we compare different deep learning based semantic segmentation algorithms on the image dataset which are acquired from the real patient samples using a bright-field microscopy. Without cell staining, hyper-parameter optimized, and modified U-Net semantic segmentation algorithm yields 98.7% global accuracy, 86.1% mean IoU, 92.2% mean precision, 92.2% mean recall and 92.2% mean F-1 score measure on the patient dataset. After segmentation, quantification result yields 89% average precision, 97% average recall on test images. By applying the deep learning algorithms, we are able to improve our previous results that employed conventional computer vision methods.

Description

Celebi, Fatma/0000-0001-7472-8297; Icoz, Kutay/0000-0002-0947-6166

Keywords

Deep Learning, Semantic Segmentation, Transfer Learning, Mrd Biochip, Microfluidics, Bright-Field Microscopy

Turkish CoHE Thesis Center URL

Fields of Science

0301 basic medicine, 0303 health sciences, 03 medical and health sciences

Citation

WoS Q

Q2

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Q1
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OpenCitations Citation Count
4

Source

Biomedical Signal Processing and Control

Volume

77

Issue

Start Page

103783

End Page

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CrossRef : 9

Scopus : 12

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Mendeley Readers : 17

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