Automated Life Stage Classification of Malaria Using Deep Learning

被引:0
作者
Ramesh J.V.N. [1 ]
Agarwal R. [2 ]
Jyasta H. [1 ]
Sivani B. [1 ]
Mounika P.A.S.T. [1 ]
Bhargavi B. [1 ]
机构
[1] Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Guntur Dist., Andhra Pradesh, Vaddeswaram
[2] School of Computer Science & Engineering (SCOPE), VIT-AP University, Andhra Pradesh, Amaravati
关键词
Blood smear; Deep Learning; life stage classification; Malaria microscopic cell images;
D O I
10.4108/eetpht.10.5439
中图分类号
学科分类号
摘要
INTRODUCTION: Malaria, an infectious illness spread by mosquitoes, is a serious hazard to humans and animals, with an increasing number of cases recorded yearly. Prompt and precise diagnosis, as well as preventative actions, are critical for effectively combating this condition. Malaria is now diagnosed using standard techniques. Microscopy of blood smears, which consists of small pictures, is used by trained specialists to identify diseased cells and define their life phases. The World Health Organisation (WHO) has approved this microscopy-based malaria diagnostic method. Drawing a blood sample from the finger, pricking it, spreading it onto a clean glass slide, and allowing it to dry naturally are all steps in the method. Thin blood smears were previously used to identify parasites under the microscope, but thick blood smears are utilized when parasite levels are low. OBJECTIVES: Due to its reliance on medical knowledge, high prices, time-consuming nature, and unsatisfactory outcomes, this technique has significant disadvantages. However, as deep learning algorithms progress, these activities may be completed more effectively and with fewer human resources. METHODS: This study demonstrates the usefulness of transfer learning, a type of deep learning, in categorizing microscopic pictures of parasitized versus uninfected malaria cells. Six models were evaluated using the publicly accessible NIH dataset, proving the usefulness of the suggested technique. RESULTS: VGG19 model fared better than its competitors, obtaining 95.05% accuracy, 92.83% precision, 96.88% sensitivity, 93.46% specificity, and 94.81% F1-score. CONCLUSION: This categorization of malaria cell photos will benefit microscopists in particular, as it will improve their workflow and provide a viable alternative for detecting malaria using microscopic cell images. © 2024 J. V. Naga Ramesh et al., licensed to EAI.
引用
收藏
相关论文
共 50 条
  • [1] Automated Identification of Malaria-Infected Cells and Classification of Human Malaria Parasites Using a Two-Stage Deep Learning Technique
    Sukumarran, Dhevisha
    Loh, Ee Sam
    Khairuddin, Anis Salwa Mohd
    Ngui, Romano
    Sulaiman, Wan Yusoff Wan
    Vythilingam, Indra
    Divis, Paul Cliff Simon
    Hasikin, Khairunnisa
    IEEE ACCESS, 2024, 12 : 135746 - 135763
  • [2] A lightweight deep learning architecture for malaria parasite-type classification and life cycle stage detection
    Chaudhry, Hafiza Ayesha Hoor
    Farid, Muhammad Shahid
    Fiandrotti, Attilio
    Grangetto, Marco
    Neural Computing and Applications, 2024, 36 (31) : 19795 - 19805
  • [3] Plasmodium Life Cycle-Stage Classification on Thick Blood Smear Microscopy Images using Deep Learning: A Contribution to Malaria Diagnosis
    Araujo, F. A. S.
    Colares, N. D.
    Carvalho, U. P.
    Costa Filho, C. F. F.
    Costa, M. G. F.
    2023 19TH INTERNATIONAL SYMPOSIUM ON MEDICAL INFORMATION PROCESSING AND ANALYSIS, SIPAIM, 2023,
  • [4] Automated Dysarthria Severity Classification Using Deep Learning Frameworks
    Joshy, Amlu Anna
    Rajan, Rajeev
    28TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2020), 2021, : 116 - 120
  • [5] Automated Pavement Cracks Detection and Classification Using Deep Learning
    Nafaa, Selvia
    Ashour, Karim
    Mohamed, Rana
    Essam, Hafsa
    Emad, Doaa
    Elhenawy, Mohammed
    Ashqar, Huthaifa I.
    Hassan, Abdallah A.
    Alhadidi, Taqwa I.
    2024 IEEE 3RD INTERNATIONAL CONFERENCE ON COMPUTING AND MACHINE INTELLIGENCE, ICMI 2024, 2024,
  • [6] Automated Method for Intracranial Aneurysm Classification Using Deep Learning
    Hlavata, Roberta
    Kamencay, Patrik
    Radilova, Martina
    Sykora, Peter
    Hudec, Robert
    SENSORS, 2024, 24 (14)
  • [7] Automated detection & classification of knee arthroplasty using deep learning
    Yi, Paul H.
    Wei, Jinchi
    Kim, Tae Kyung
    Sair, Haris, I
    Hui, Ferdinand K.
    Hager, Gregory D.
    Fritz, Jan
    Oni, Julius K.
    KNEE, 2020, 27 (02) : 535 - 542
  • [8] Automated Industry Classification with Deep Learning
    Wood, Sam
    Muthyala, Rohit
    Jin, Yi
    Qin, Yixing
    Rukadikar, Nilaj
    Rai, Amit
    Gao, Hua
    2017 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2017, : 122 - 129
  • [9] Classification of Plasmodium Skizon and Gametocytes Malaria Images Using Deep Learning
    Jusman, Yessi
    Firdiantika, Indah Monisa
    Riyadi, Slamet
    Kanafiah, Siti Nurul Aqmariah Mohd
    Hassan, Rosline
    Mohamed, Zeehaida
    2021 1ST INTERNATIONAL CONFERENCE ON ELECTRONIC AND ELECTRICAL ENGINEERING AND INTELLIGENT SYSTEM (ICE3IS), 2021, : 143 - 148
  • [10] Automated Industry Classification with Deep Learning
    Wood, Sam
    Muthyala, Rohit
    Jin, Yi
    Qin, Yixing
    Rukadikar, Nilaj
    Gao, Hua
    Rai, Amit
    2018 IEEE 12TH INTERNATIONAL CONFERENCE ON SEMANTIC COMPUTING (ICSC), 2018, : 64 - 70