CoMB-Deep: Composite Deep Learning-Based Pipeline for Classifying Childhood Medulloblastoma and Its Classes

被引:31
|
作者
Attallah, Omneya [1 ]
机构
[1] Arab Acad Sci Technol & Maritime Transport, Coll Engn & Technol, Dept Elect & Commun Engn, Alexandria, Egypt
关键词
childhood medulloblastoma; histopathology; computer-aided diagnosis; convolutional neural network; long short term memory; FEATURE-SELECTION; BRAIN-TUMORS; IMAGE CLASSIFICATION; CURRENT MANAGEMENT; FEATURE-EXTRACTION; FUTURE; EPIDEMIOLOGY; RECOGNITION; INSIGHTS; SYSTEM;
D O I
10.3389/fninf.2021.663592
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Childhood medulloblastoma (MB) is a threatening malignant tumor affecting children all over the globe. It is believed to be the foremost common pediatric brain tumor causing death. Early and accurate classification of childhood MB and its classes are of great importance to help doctors choose the suitable treatment and observation plan, avoid tumor progression, and lower death rates. The current gold standard for diagnosing MB is the histopathology of biopsy samples. However, manual analysis of such images is complicated, costly, time-consuming, and highly dependent on the expertise and skills of pathologists, which might cause inaccurate results. This study aims to introduce a reliable computer-assisted pipeline called CoMB-Deep to automatically classify MB and its classes with high accuracy from histopathological images. This key challenge of the study is the lack of childhood MB datasets, especially its four categories (defined by the WHO) and the inadequate related studies. All relevant works were based on either deep learning (DL) or textural analysis feature extractions. Also, such studies employed distinct features to accomplish the classification procedure. Besides, most of them only extracted spatial features. Nevertheless, CoMB-Deep blends the advantages of textural analysis feature extraction techniques and DL approaches. The CoMB-Deep consists of a composite of DL techniques. Initially, it extracts deep spatial features from 10 convolutional neural networks (CNNs). It then performs a feature fusion step using discrete wavelet transform (DWT), a texture analysis method capable of reducing the dimension of fused features. Next, the CoMB-Deep explores the best combination of fused features, enhancing the performance of the classification process using two search strategies. Afterward, it employs two feature selection techniques on the fused feature sets selected in the previous step. A bi-directional long-short term memory (Bi-LSTM) network; a DL-based approach that is utilized for the classification phase. CoMB-Deep maintains two classification categories: binary category for distinguishing between the abnormal and normal cases and multi-class category to identify the subclasses of MB. The results of the CoMB-Deep for both classification categories prove that it is reliable. The results also indicate that the feature sets selected using both search strategies have enhanced the performance of Bi-LSTM compared to individual spatial deep features. CoMB-Deep is compared to related studies to verify its competitiveness, and this comparison confirmed its robustness and outperformance. Hence, CoMB-Deep can help pathologists perform accurate diagnoses, reduce misdiagnosis risks that could occur with manual diagnosis, accelerate the classification procedure, and decrease diagnosis costs.
引用
收藏
页数:19
相关论文
共 50 条
  • [31] Deep learning-based fall detection
    Chiang, Jason Wei Hoe
    Zhang, Li
    DEVELOPMENTS OF ARTIFICIAL INTELLIGENCE TECHNOLOGIES IN COMPUTATION AND ROBOTICS, 2020, 12 : 891 - 898
  • [32] Deep Learning-Based Sphere Decoding
    Mohammadkarimi, Mostafa
    Mehrabi, Mehrtash
    Ardakani, Masoud
    Jing, Yindi
    IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2019, 18 (09) : 4368 - 4378
  • [33] Deep Learning-Based Average Consensus
    Kishida, Masako
    Ogura, Masaki
    Yoshida, Yuichi
    Wadayama, Tadashi
    IEEE ACCESS, 2020, 8 : 142404 - 142412
  • [34] Deep learning-based method for predicting and classifying the binding affinity of protein-protein complexes
    Nikam, Rahul
    Yugandhar, Kumar
    Gromiha, M. Michael
    BIOCHIMICA ET BIOPHYSICA ACTA-PROTEINS AND PROTEOMICS, 2023, 1871 (06):
  • [35] Deep Learning-Based DOA Estimation
    Zheng, Shilian
    Yang, Zhuang
    Shen, Weiguo
    Zhang, Luxin
    Zhu, Jiawei
    Zhao, Zhijin
    Yang, Xiaoniu
    IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2024, 10 (03) : 819 - 835
  • [36] On Deep Learning-Based Channel Decoding
    Gruber, Tobias
    Cammerer, Sebastian
    Hoydis, Jakob
    ten Brink, Stephan
    2017 51ST ANNUAL CONFERENCE ON INFORMATION SCIENCES AND SYSTEMS (CISS), 2017,
  • [37] Deep learning-based modelling of pyrolysis
    Ozcan, Alper
    Kasif, Ahmet
    Sezgin, Ismail Veli
    Catal, Cagatay
    Sanwal, Muhammad
    Merdun, Hasan
    CLUSTER COMPUTING-THE JOURNAL OF NETWORKS SOFTWARE TOOLS AND APPLICATIONS, 2024, 27 (01): : 1089 - 1108
  • [38] Deep Learning-Based Video Retrieval Using Object Relationships and Associated Audio Classes
    Kim, Byoungjun
    Shim, Ji Yea
    Park, Minho
    Ro, Yong Man
    MULTIMEDIA MODELING (MMM 2020), PT II, 2020, 11962 : 803 - 808
  • [39] A Comparative Analysis of Deep Learning-Based Approaches for Classifying Dental Implants Decision Support System
    Lubbad, Mohammed A. H.
    Kurtulus, Ikbal Leblebicioglu
    Karaboga, Dervis
    Kilic, Kerem
    Basturk, Alper
    Akay, Bahriye
    Nalbantoglu, Ozkan Ufuk
    Yilmaz, Ozden Melis Durmaz
    Ayata, Mustafa
    Yilmaz, Serkan
    Pacal, Ishak
    JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2024, 37 (05): : 2559 - 2580
  • [40] Deep Learning-Based Computed Tomography Image Standardization to Improve Generalizability of Deep Learning-Based Hepatic Segmentation
    Lee, Seul Bi
    Hong, Youngtaek
    Cho, Yeon Jin
    Jeong, Dawun
    Lee, Jina
    Yoon, Soon Ho
    Lee, Seunghyun
    Choi, Young Hun
    Cheon, Jung-Eun
    KOREAN JOURNAL OF RADIOLOGY, 2023, 24 (04) : 294 - 304