Advancing Medical Diagnostics with Deep Learning and Data Preprocessing

Authors

  • Ruilin Xu The University of Chicago, Chicago, USA
  • Yun Zi Georgia Institute of Technology, Atlanta, USA
  • Lu Dai University of California, Berkeley, Berkeley, USA
  • Haoran Yu Carnegie Mellon University, Pittsburgh, USA
  • Mengran Zhu Miami University, Oxford, USA

Keywords:

Deep Learning, Medical Auxiliary Diagnosis, Data Analysis, Principal Component Analysis, Multilayer Perceptron Neural Network.

Abstract

To address the inefficiencies and inaccuracies in analyzing large-scale medical diagnostic datasets, this paper introduces a deep learning-based method for processing auxiliary medical diagnostic data. The proposed approach involves preprocessing the medical diagnostic data through normalization and principal component analysis to extract relevant features. Subsequently, a neural network utilizing a multilayer perceptron is employed to analyze the preprocessed data, facilitating diagnostic classification. It also provides intelligent support for medical professionals. The method was implemented and tested using the Python programming environment. Results indicate that the proposed approach achieves better performance than other comparative methods and demonstrates significant practical application potential.

References

G. Litjens, T. Kooi, B. E. Bejnordi, A. A. A. Setio, F. Ciompi, M. Ghafoorian, ... and C. I. Sánchez, "A survey on deep learning in medical image analysis," Medical Image Analysis, vol. 42, pp. 60-88, 2017.

Q. Wang, S. E. Schindler, G. Chen, N. S. Mckay, A. McCullough, S. Flores, ... and T. L. Benzinger, "Investigating White Matter Neuroinflammation in Alzheimer Disease Using Diffusion-Based Neuroinflammation Imaging," Neurology, vol. 102, no. 4, p. e208013, 2024.

J. Yao, T. Wu, and X. Zhang, "Improving depth gradient continuity in transformers: A comparative study on monocular depth estimation with CNN," arXiv preprint arXiv:2308.08333, 2023.

J. G. Lee, S. Jun, Y. W. Cho, H. Lee, G. B. Kim, J. B. Seo, and N. Kim, "Deep learning in medical imaging: general overview," Korean Journal of Radiology, vol. 18, no. 4, p. 570, 2017.

H. Abdi and L. J. Williams, "Principal component analysis," Wiley Interdisciplinary Reviews: Computational Statistics, vol. 2, no. 4, pp. 433-459, 2010.

H. Taud and J. F. Mas, "Multilayer perceptron (MLP)," in Geomatic Approaches for Modeling Land Change Scenarios, 2018, pp. 451-455.

W. Dai, J. Tao, X. Yan, Z. Feng, and J. Chen, "Addressing Unintended Bias in Toxicity Detection: An LSTM and Attention-Based Approach," in 2023 5th International Conference on Artificial Intelligence and Computer Applications (ICAICA), Nov. 2023, pp. 375-379.

T. Xu, I. Li, Q. Zhan, Y. Hu, and H. Yang, "Research on Intelligent System of Multimodal Deep Learning in Image Recognition," Journal of Computing and Electronic Information Management, vol. 12, no. 3, pp. 79-83, 2024.

H. Zhang, S. Diao, Y. Yang, J. Zhong, and Y. Yan, "Multi-scale image recognition strategy based on convolutional neural network," Journal of Computing and Electronic Information Management, vol. 12, no. 3, pp. 107-113, 2024.

X. Yan, W. Wang, M. Xiao, Y. Li, and M. Gao, "Survival Prediction Across Diverse Cancer Types Using Neural Networks," arXiv preprint arXiv:2404.08713, 2024.

Z. Liu and J. Song, "Comparison of Tree-based Feature Selection Algorithms on Biological Omics Dataset," in Proceedings of the 5th International Conference on Advances in Artificial Intelligence, Nov. 2021, pp. 165-169.

S. Lu, Z. Liu, T. Liu, and W. Zhou, "Scaling-up medical vision-and-language representation learning with federated learning," Engineering Applications of Artificial Intelligence, vol. 126, p. 107037, 2023.

S. Wang, Z. Liu, and B. Peng, "A Self-training Framework for Automated Medical Report Generation," in Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing, Dec. 2023, pp. 16443-16449.

M. Xiao, Y. Li, X. Yan, M. Gao, and W. Wang, "Convolutional neural network classification of cancer cytopathology images: taking breast cancer as an example," arXiv preprint arXiv:2404.08279, 2024.

B. Zhao, Z. Cao, and S. Wang, "Lung vessel segmentation based on random forests," Electronics Letters, vol. 53, no. 4, pp. 220-222, 2017.

E. Bisong and E. Bisong, "The multilayer perceptron (MLP)," in Building Machine Learning and Deep Learning Models on Google Cloud Platform: A Comprehensive Guide for Beginners, 2019, pp. 401-405.

W. Liu, Y. Wen, Z. Yu, and M. Yang, "Large-margin softmax loss for convolutional neural networks," arXiv preprint arXiv:1612.02295, 2016.

J. He, L. Li, J. Xu, and C. Zheng, "ReLU deep neural networks and linear finite elements," arXiv preprint arXiv:1807.03973, 2018.

G. Goeckenjan, H. Sitter, M. Thomas, D. Branscheid, M. Flentje, F. Griesinger, ... and K. Deppermann, "PubMed results," Pneumologie, vol. 65, no. 8, pp. e51-e75, 2011.

Y. Li, X. Yan, M. Xiao, W. Wang, and F. Zhang, "Investigation of Creating Accessibility Linked Data Based on Publicly Available Accessibility Datasets," in Proceedings of the 2023 13th International Conference on Communication and Network Security, 2023, pp. 77-81.

P. Khan, M. F. Kader, S. R. Islam, A. B. Rahman, M. S. Kamal, M. U. Toha, and K. S. Kwak, "Machine learning and deep learning approaches for brain disease diagnosis: principles and recent advances," IEEE Access, vol. 9, pp. 37622-37655, 2021.

Z. Ahmed, K. Mohamed, S. Zeeshan, and X. Dong, "Artificial intelligence with multi-functional machine learning platform development for better healthcare and precision medicine," Database, vol. 2020, p. baaa010, 2020.

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Published

2024-05-01

How to Cite

[1]
R. Xu, Y. Zi, L. Dai, H. Yu, and M. Zhu, “Advancing Medical Diagnostics with Deep Learning and Data Preprocessing”, IJIRCST, vol. 12, no. 3, pp. 143–147, May 2024.

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