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PARKINSONNET: CLASSIFICATION PARKINSON'S DISEASE MODEL BASED ON NOVEL DEEP LEARNING STRUCTURE

Yıl 2023, , 259 - 276, 31.12.2023
https://doi.org/10.53600/ajesa.1382806

Öz

Over the last few decades, neuroimaging, particularly magnetic resonance imaging (MRI), has played a significant sessional part in studying brain functions and diseases. MRI images, combined with unique ML approaches and developed tools during these years, have opened up new opportunities for diagnosing neurological illnesses. However, due to the apparent symptoms that are similar to each other, brain illnesses are regarded as difficult to precisely detect. This research examines a newly developed algorithm (ParkinsonNet) to classify Parkinson's disorder into two unique classes which are Control (healthy) and Parkinson's (PD), this method is one of the deep learning approaches, Convolutional neural networks (CNN). CNN is one way that may be used to classify a range of brain illnesses such as Parkinson's. We employed a freshly constructed CNN technique from scratch, and we got 97.9% accuracy which is considered outstanding compared with recently published articles using the same dataset

Kaynakça

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Yıl 2023, , 259 - 276, 31.12.2023
https://doi.org/10.53600/ajesa.1382806

Öz

Kaynakça

  • Aich, Satyabrata, Hee-Cheol Kim, Kueh Lee Hui, Ahmed Abdulhakim Al-Absi, and Mangal Sain. 2019. "A supervised machine learning approach using different feature selection techniques on voice datasets for prediction of Parkinson’s disease." In 2019 21st International Conference on Advanced Communication Technology (ICACT) ICACT), 1116 21. IEEE.
  • Al-azzawi, Athar Hussein A li, Saif Al jumaili, Abdullahi Abdu Ibrahim, and Adil Deniz Duru. 2022. "Classification of epileptic seizure features from scalp electrical measurements using KNN and SVM based on Fourier Transform." In AIP Conference Proceedings , 020003. AIP Publishing LLC.
  • Al-Fatlawi, Ali H, Mohammed H Jabardi, and Sai Ho Ling. 2016. "Efficient diagnosis system for Parkinson's disease using deep belief network." In 2016 IEEE Congress on evolutionary computation (CEC) CEC), 1324 30. IEEE.
  • Al-Jumaili, Saif, Athar Al Azzawi, Osman Nuri Uçan, and Adil Deniz Duru. 2023. 'Classification of the Level of Alzheimer's Disease Using Anatomical Magnetic Resonance Images Based on a Novel Deep Learning Structure.' in, Diagnosis of Neurological Disorders Based on Deep Learning Techniques (CRC press)
  • Al-Jumaili, Saif, Ahmed Al Jumaili, Salam Alyassri, Adil Deniz Duru, and Osman Nuri Uçan. 2022. "Recent Advances on Convolutional Architectures in Medical Applications: Classical or Quantum?" In 2022 International Symposium on Multidisciplinary Studies and Innovative Technologies (ISMSIT) ISMSIT), 800 05. IEEE.
  • Alharthi, Abdullah S, Alexander J Casson, and Krikor B Ozanyan. 2020. 'Gait spatiotemporal signal analysis for Parkinson’s disease detection and severity rating', IEEE Sensors Journal , 21: 1838 48.
  • Ali, Hafsa Moontari, M Shamim Kaiser, and Mufti Mahmud. 2019. "Application of convolutional neural network in segmenting brain regions from MRI data." In International conference on brain informatics , 136 46. Springer.
  • Ali, Liaqat, Shafqat Ullah Khan, Muhammad Arshad, Sardar Ali, and Muhammad Anwar. 2019. "A multi model framework for evaluating type of speech samples having complementary information about Parkinson's disease." In 2019 International conference on electrical, communication, and computer engineering (ICECCE) ICECCE), 1 5. IEEE.
  • Ali, Liaqat, Ce Zhu, Noorbakhsh Amiri Golilarz, Ashir Javeed, Mingyi Zhou, and Yipeng Liu. 2019. 'Reliable Parkinson’s disease detection by analyzing handwritten drawings: construction of an unbiased cascaded learning system based on feature selection and adaptive boosting model', IEEE Access , 7: 116480 89.
  • Alqahtani, Ebtesam J, Fatimah H Alshamrani, Hajra F Syed, and Sunday O Olatunji. 2018. "Classification of Parkinson’s disease using NNge classification algorithm." In 2018 21st Saudi Computer Society National Computer Conference (NCC) NCC), 1 7. IEEE.
  • Anand, Anuj, Md Amaan Haque, John Sahaya Rani Alex, and Nithya Venkatesan. 2018. "Evaluation of Machine learning and Deep learning algorithms combined with dimentionality reduction techniques for classification of Parkinson’s Disease." In 2018 IEEE international symposium on signal processing and information technology (ISSPIT) ISSPIT), 342 47. IEEE.
  • Buongiorno, Domenico, Ilaria Bortone, Giacomo Donato Cascarano, Gianpaolo Francesco Trotta, Antonio Brunetti, and Vitoantonio Bevilacqua. 2019. 'A low cost vision system based on the analysis of motor features for recognition and severity rating of Parkinson’s Disease', BMC Medical Informatics and Decision Making , 19: 1 13.
  • Butt, Abdul Haleem, Filippo Cavallo, Carlo Maremmani, and Erika Rovini. 2020. "Biomechanical parameters assessment for the classification of Parkinson disease using bidirectional long short term memory." In 2020 42nd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC) EMBC), 5761 64. IEEE.
  • Cai, Zhennao, Jianhua Gu, Caiyun Wen, Dong Zhao, Chunyu Huang, Hui Huang, Changfei Tong, Jun Li, and Huiling Chen. 2018. 'An intelligent Parkinson’s disease diagnostic system based on a chaotic bacterial foraging optimization enhanced fuzzy KNN approach', Computational and Mathematical Methods in Medicine ,
  • Cantürk, Ismail. 2021. 'Fuzzy recurrence plot based analysis of dynamic and static spiral tests of Parkinson’s disease patients', Neural Computing and Applications , 33: 349 60.
  • Celik, Enes, and Sevinc Ilhan Omurca. 2019. "Improving Parkinson's disease diagnosis with machine learning methods." In 2019 Scientific Meeting on Electrical Electronics & Biomedical Engineering and Computer Science (EBBT) EBBT), 1 4. Ieee.
  • Chakraborty, Sabyasachi, Satyabrata Aich, and Hee Cheol Kim. 2020. 'Detection of Parkinson’s disease from 3T T1 weighted MRI scans using 3D convolutional neural network', Diagnostics , 10:
  • Chand, Ganesh B, Dominic B Dwyer, Guray Erus, Aristeidis Sotiras, Erdem Varol, Dhivya Srinivasan, Jimit Doshi, Raymond Pomponio, Alessandro Pigoni, and Paola Dazzan. 2020. 'Two distinct neuroanatomical subtypes of schizophrenia revealed using machine learn ing', Brain , 143: 1027 38.
  • Chien, Chung Yao, Szu Wei Hsu, Tsung Lin Lee, Pi Shan Sung, and Chou Ching Lin. 2020. 'Using artificial neural network to discriminate Parkinson’s disease from other Parkinsonisms by focusing on putamen of dopamine transporter SPECT images', Biomedicines , 9:
  • Cigdem, Ozkan, and Hasan Demirel. 2018. 'Performance analysis of different classification algorithms using different feature selection methods on Parkinson's disease detection', Journal of neuroscience methods , 309: 81 90.
  • Dai, Yin, Zheng Tang, and Yang Wang. 2019. 'Data driven intelligent diagnostics for Parkinson’s disease', IEEE Access , 7: 106941 50. Danielyan, Arman, and Henry A Nasrallah. 2009. 'Neurological disorders in schizophrenia', Psychiatric Clinics , 32: 719 57.
  • Diaz, Moises, Miguel Angel Ferrer, Donato Impedovo, Giuseppe Pirlo, and Gennaro Vessio. 2019. 'Dynamically enhanced static handwriting representation for Parkinson’s disease detection', Pattern Recognition Letters , 128: 204 10.
  • Diaz, Moises, Momina Moetesum, Imran Siddiqi, and Gennaro Vessio. 2021. 'Sequence based dynamic handwriting analysis for Parkinson’s disease detection with one dimensional convolutions and BiGRUs', Expert Systems with Applications , 168:
  • Dinesh, Akshaya, and Jennifer He. 2017. "Using machine learning to diagnose Parkinson's disease from voice recordings." In 2017 IEEE MIT Undergraduate Research Technology Conference (URTC) URTC), 1 4. IEEE.
  • Erdogdu Sakar, Betul, Gorkem Serbes, and C Okan Sakar. 2017. 'Analyzing the effectiveness of vocal features in early telediagnosis of Parkinson's disease', Plos one , 12:
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  • Litjens, Geert, Thijs Kooi, Babak Ehteshami Bejnordi, Arnaud Arindra Adiyoso Setio, Francesco Ciompi, Mohsen Ghafoorian, Jeroen Awm Van Der Laak, Bram Van Ginneken, and Clara I Sánchez. 2017. 'A survey on deep learning in medical image analysis', Medical Image Analysis , 42: 60 88.
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  • Mathew, Nimmy Ann, RS Vivek, and PR Anurenjan. 2018. "Early diagnosis of Alzheimer's disease from MRI images using PNN." In 2018 international CET conference on control, communication, and computing (IC4) IC4), 161 64. IEEE.
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  • Moharkan, Zaid Ajaz, Harshul Garg, Tanupriya Chodhury, and Praveen Kumar. 2017. "A classification based Parkinson detection system." In 2017 International Conference On Smart Technologies For Smart Nation (SmartTechCon) SmartTechCon), 1509 13. IEEE.
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  • Wodzinski, Marek, Andrzej Skalski, Daria Hemmerling, Juan Rafael Orozco Arroyave, and Elmar Nöth. 2019. "Deep learning approach to Parkinson’s disease detection using voice recordings and convolutional neural network dedicated to image classification." In 2019 41st annual of the IEEE engineering in medicine and biology society (EMBC) EMBC), 71720. IEEE.
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Toplam 86 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Yazılım Mühendisliği (Diğer), Biyomedikal Mühendisliğinde Biyomateryaller, Biyomekanik Mühendisliği
Bölüm Araştırma Makalesi
Yazarlar

Saif Al-jumaili 0000-0001-7249-4976

Yayımlanma Tarihi 31 Aralık 2023
Gönderilme Tarihi 31 Ekim 2023
Kabul Tarihi 1 Kasım 2023
Yayımlandığı Sayı Yıl 2023

Kaynak Göster

APA Al-jumaili, S. (2023). PARKINSONNET: CLASSIFICATION PARKINSON’S DISEASE MODEL BASED ON NOVEL DEEP LEARNING STRUCTURE. AURUM Journal of Engineering Systems and Architecture, 7(2), 259-276. https://doi.org/10.53600/ajesa.1382806

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