Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.

Bone metastasis is one of the most frequent diseases in prostate cancer; scintigraphy imaging is particularly important for the clinical diagnosis of bone metastasis. Up to date, minimal research has been conducted regarding the application of machine learning with emphasis on modern efficient convo...

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Main Authors: Nikolaos Papandrianos, Elpiniki Papageorgiou, Athanasios Anagnostis, Konstantinos Papageorgiou
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0237213
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spelling doaj-8b89799fdb9b480f9a2d10c2f9a8b43b2021-03-03T22:00:41ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01158e023721310.1371/journal.pone.0237213Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.Nikolaos PapandrianosElpiniki PapageorgiouAthanasios AnagnostisKonstantinos PapageorgiouBone metastasis is one of the most frequent diseases in prostate cancer; scintigraphy imaging is particularly important for the clinical diagnosis of bone metastasis. Up to date, minimal research has been conducted regarding the application of machine learning with emphasis on modern efficient convolutional neural networks (CNNs) algorithms, for the diagnosis of prostate cancer metastasis from bone scintigraphy images. The advantageous and outstanding capabilities of deep learning, machine learning's groundbreaking technological advancement, have not yet been fully investigated regarding their application in computer-aided diagnosis systems in the field of medical image analysis, such as the problem of bone metastasis classification in whole-body scans. In particular, CNNs are gaining great attention due to their ability to recognize complex visual patterns, in the same way as human perception operates. Considering all these new enhancements in the field of deep learning, a set of simpler, faster and more accurate CNN architectures, designed for classification of metastatic prostate cancer in bones, is explored. This research study has a two-fold goal: to create and also demonstrate a set of simple but robust CNN models for automatic classification of whole-body scans in two categories, malignant (bone metastasis) or healthy, using solely the scans at the input level. Through a meticulous exploration of CNN hyper-parameter selection and fine-tuning, the best architecture is selected with respect to classification accuracy. Thus a CNN model with improved classification capabilities for bone metastasis diagnosis is produced, using bone scans from prostate cancer patients. The achieved classification testing accuracy is 97.38%, whereas the average sensitivity is approximately 95.8%. Finally, the best-performing CNN method is compared to other popular and well-known CNN architectures used for medical imaging, like VGG16, ResNet50, GoogleNet and MobileNet. The classification results show that the proposed CNN-based approach outperforms the popular CNN methods in nuclear medicine for metastatic prostate cancer diagnosis in bones.https://doi.org/10.1371/journal.pone.0237213
collection DOAJ
language English
format Article
sources DOAJ
author Nikolaos Papandrianos
Elpiniki Papageorgiou
Athanasios Anagnostis
Konstantinos Papageorgiou
spellingShingle Nikolaos Papandrianos
Elpiniki Papageorgiou
Athanasios Anagnostis
Konstantinos Papageorgiou
Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.
PLoS ONE
author_facet Nikolaos Papandrianos
Elpiniki Papageorgiou
Athanasios Anagnostis
Konstantinos Papageorgiou
author_sort Nikolaos Papandrianos
title Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.
title_short Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.
title_full Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.
title_fullStr Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.
title_full_unstemmed Bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.
title_sort bone metastasis classification using whole body images from prostate cancer patients based on convolutional neural networks application.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Bone metastasis is one of the most frequent diseases in prostate cancer; scintigraphy imaging is particularly important for the clinical diagnosis of bone metastasis. Up to date, minimal research has been conducted regarding the application of machine learning with emphasis on modern efficient convolutional neural networks (CNNs) algorithms, for the diagnosis of prostate cancer metastasis from bone scintigraphy images. The advantageous and outstanding capabilities of deep learning, machine learning's groundbreaking technological advancement, have not yet been fully investigated regarding their application in computer-aided diagnosis systems in the field of medical image analysis, such as the problem of bone metastasis classification in whole-body scans. In particular, CNNs are gaining great attention due to their ability to recognize complex visual patterns, in the same way as human perception operates. Considering all these new enhancements in the field of deep learning, a set of simpler, faster and more accurate CNN architectures, designed for classification of metastatic prostate cancer in bones, is explored. This research study has a two-fold goal: to create and also demonstrate a set of simple but robust CNN models for automatic classification of whole-body scans in two categories, malignant (bone metastasis) or healthy, using solely the scans at the input level. Through a meticulous exploration of CNN hyper-parameter selection and fine-tuning, the best architecture is selected with respect to classification accuracy. Thus a CNN model with improved classification capabilities for bone metastasis diagnosis is produced, using bone scans from prostate cancer patients. The achieved classification testing accuracy is 97.38%, whereas the average sensitivity is approximately 95.8%. Finally, the best-performing CNN method is compared to other popular and well-known CNN architectures used for medical imaging, like VGG16, ResNet50, GoogleNet and MobileNet. The classification results show that the proposed CNN-based approach outperforms the popular CNN methods in nuclear medicine for metastatic prostate cancer diagnosis in bones.
url https://doi.org/10.1371/journal.pone.0237213
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