YOLO and residual network for colorectal cancer cell detection and counting

The HT-29 cell line, derived from human colon cancer, is valuable for biological and cancer research applications. Early detection is crucial for improving the chances of survival, and researchers are introducing new techniques for accurate cancer diagnosis. This study introduces an efficient deep l...

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Published in:HELIYON
Main Authors: Haq, Inayatul; Mazhar, Tehseen; Asif, Rizwana Naz; Ghadi, Yazeed Yasin; Ullah, Najib; Khan, Muhammad Amir; Al-Rasheed, Amal
Format: Article
Language:English
Published: CELL PRESS 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001169901400001
author Haq
Inayatul; Mazhar
Tehseen; Asif
Rizwana Naz; Ghadi
Yazeed Yasin; Ullah
Najib; Khan
Muhammad Amir; Al-Rasheed
Amal
spellingShingle Haq
Inayatul; Mazhar
Tehseen; Asif
Rizwana Naz; Ghadi
Yazeed Yasin; Ullah
Najib; Khan
Muhammad Amir; Al-Rasheed
Amal
YOLO and residual network for colorectal cancer cell detection and counting
Science & Technology - Other Topics
author_facet Haq
Inayatul; Mazhar
Tehseen; Asif
Rizwana Naz; Ghadi
Yazeed Yasin; Ullah
Najib; Khan
Muhammad Amir; Al-Rasheed
Amal
author_sort Haq
spelling Haq, Inayatul; Mazhar, Tehseen; Asif, Rizwana Naz; Ghadi, Yazeed Yasin; Ullah, Najib; Khan, Muhammad Amir; Al-Rasheed, Amal
YOLO and residual network for colorectal cancer cell detection and counting
HELIYON
English
Article
The HT-29 cell line, derived from human colon cancer, is valuable for biological and cancer research applications. Early detection is crucial for improving the chances of survival, and researchers are introducing new techniques for accurate cancer diagnosis. This study introduces an efficient deep learning-based method for detecting and counting colorectal cancer cells (HT-29). The colorectal cancer cell line was procured from a company. Further, the cancer cells were cultured, and a transwell experiment was conducted in the lab to collect the dataset of colorectal cancer cell images via fluorescence microscopy. Of the 566 images, 80 % were allocated to the training set, and the remaining 20 % were assigned to the testing set. The HT-29 cell detection and counting in medical images is performed by integrating YOLOv2, ResNet-50, and ResNet-18 architectures. The accuracy achieved by ResNet-18 is 98.70 % and ResNet-50 is 96.66 %. The study achieves its primary objective by focusing on detecting and quantifying congested and overlapping colorectal cancer cells within the images. This innovative work constitutes a significant development in overlapping cancer cell detection and counting, paving the way for novel advancements and opening new avenues for research and clinical applications. Researchers can extend the study by exploring variations in ResNet and YOLO architectures to optimize object detection performance. Further investigation into real-time deployment strategies will enhance the practical applicability of these models.
CELL PRESS

2405-8440
2024
10
2
10.1016/j.heliyon.2024.e24403
Science & Technology - Other Topics
Green Published, gold
WOS:001169901400001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001169901400001
title YOLO and residual network for colorectal cancer cell detection and counting
title_short YOLO and residual network for colorectal cancer cell detection and counting
title_full YOLO and residual network for colorectal cancer cell detection and counting
title_fullStr YOLO and residual network for colorectal cancer cell detection and counting
title_full_unstemmed YOLO and residual network for colorectal cancer cell detection and counting
title_sort YOLO and residual network for colorectal cancer cell detection and counting
container_title HELIYON
language English
format Article
description The HT-29 cell line, derived from human colon cancer, is valuable for biological and cancer research applications. Early detection is crucial for improving the chances of survival, and researchers are introducing new techniques for accurate cancer diagnosis. This study introduces an efficient deep learning-based method for detecting and counting colorectal cancer cells (HT-29). The colorectal cancer cell line was procured from a company. Further, the cancer cells were cultured, and a transwell experiment was conducted in the lab to collect the dataset of colorectal cancer cell images via fluorescence microscopy. Of the 566 images, 80 % were allocated to the training set, and the remaining 20 % were assigned to the testing set. The HT-29 cell detection and counting in medical images is performed by integrating YOLOv2, ResNet-50, and ResNet-18 architectures. The accuracy achieved by ResNet-18 is 98.70 % and ResNet-50 is 96.66 %. The study achieves its primary objective by focusing on detecting and quantifying congested and overlapping colorectal cancer cells within the images. This innovative work constitutes a significant development in overlapping cancer cell detection and counting, paving the way for novel advancements and opening new avenues for research and clinical applications. Researchers can extend the study by exploring variations in ResNet and YOLO architectures to optimize object detection performance. Further investigation into real-time deployment strategies will enhance the practical applicability of these models.
publisher CELL PRESS
issn
2405-8440
publishDate 2024
container_volume 10
container_issue 2
doi_str_mv 10.1016/j.heliyon.2024.e24403
topic Science & Technology - Other Topics
topic_facet Science & Technology - Other Topics
accesstype Green Published, gold
id WOS:001169901400001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001169901400001
record_format wos
collection Web of Science (WoS)
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