Detectrozen ( Disease Detection )

Authors

  • Vedant Jadhav  Department of Computer Engineering, Atharva College of Engineering, Malad, Atharva Educational Trust, Malad, (Affiliated to Mumbai University, Mumbai) , Maharashtra, India
  • Neeraj Chettiar  Department of Computer Engineering, Atharva College of Engineering, Malad, Atharva Educational Trust, Malad, (Affiliated to Mumbai University, Mumbai) , Maharashtra, India
  • Saheel Chavan  Department of Computer Engineering, Atharva College of Engineering, Malad, Atharva Educational Trust, Malad, (Affiliated to Mumbai University, Mumbai) , Maharashtra, India
  • Smit Mhatre  Department of Computer Engineering, Atharva College of Engineering, Malad, Atharva Educational Trust, Malad, (Affiliated to Mumbai University, Mumbai) , Maharashtra, India
  • Bhavna Arora  Department of Computer Engineering, Atharva College of Engineering, Malad, Atharva Educational Trust, Malad, (Affiliated to Mumbai University, Mumbai) , Maharashtra, India

DOI:

https://doi.org//10.32628/CSEIT2390283

Keywords:

Disease Detection, Feature Selection, Convolutional Neural Network, Deep Learning, Tensorflow

Abstract

With broad data development in biomedical and healthcare sectors, detailed analyzes of medical data support early detection of illness, patient care and community services. However, the quality of the study is lowered when the content of the medical data is incomplete. Also, various regions exhibit unique features of certain regional diseases. This can hinder disease outbreak forecasting. In this project, we streamline deep learning algorithms to effectively predict chronic disease outbreaks in populations with recurrent diseases. The diagnosis of diseases is a critical and central aspect of medicinal science. Doctors breakdown side effects in the human body more often than not to foresee diseases. In recent times, numerous research strategies have been used with a specific goal to make it more accurate. This system will help to predict the medical results efficiently. In this system, we will provide a user-friendly interface that can be used by the users to detect whether their medical test results are positive or normal, i.e. it will detect the disease. There is a great growing interest in the domain of deep learning techniques for identifying and classifying images with various dataset. This deep learning project is based on a user interface and its application of the Detrozen real life. It will also describe how the system will perform and under what it must operate. In this document, the user interface will also be shown. Both the stakeholders(users) and the developers of the interface can benefit from this approach.

References

  1. F.A. Spanhol, L.S. Oliveira, P.R. Cavalin, C. Petitjean, L. Heutte; Deep features for breast cancer histopathological image classification. In 2017 IEEE international conference on systems, man, and cybernetics, SMC 2017, Banff, AB, Canada, October 5-8, 2017 (2017), pp. 1868-1873.
  2. F.A. Spanhol, L.S. Oliveira, C. Petitjean, L. Heutte; Breast cancer histopathological image classification using convolutional neural networks. In 2016 international joint conference on neural networks, IJCNN 2016, Vancouver, BC, Canada, July 24-29, 2016 (2016), pp. 2560-2567,
  3. Z. Han, B. Wei, Y. Zheng, Y. Yin, K. Li, S. Li; Breast cancer multi-classification from histopathological images with structured deep learning model. Sci Rep, 7 (1) (2017), p. 4172
  4. J. Sun, A. Binder; Comparison of deep learning architectures for h&e histopathology images. In 2017 IEEE conference on big data and analytics (ICBDA), IEEE (2017), pp. 43-48
  5. A. Alias, B. Paulchamy, Detection of breast cancer using artificial neural network, International Journal of Innovative Research in Science 3 (3).
  6. M.G. Kanojia, S. Abraham; Breast cancer detection using RBF neural network. In Contemporary computing and informatics (IC3I), 2016 2nd international conference on, IEEE (2016), pp. 363-368
  7. A.F. Agarap; On breast cancer detection: an application of machine learning algorithms on the Wisconsin diagnostic dataset, CoRR abs/1711.07831
  8. M. Karabatak, M.C. Ince; An expert system for detection of breast cancer based on association rules and neural network. Expert Syst Appl, 36 (2) (2009), pp. 3465-3469
  9. S. Chou, T. Lee, Y.E. Shao, I. Chen; Mining the breast cancer pattern using artificial eural networks and multivariate adaptive regression splines. Expert Syst Appl, 27 (1) (2004), pp. 133-142
  10. S. Sahan, K. Polat, H. Kodaz, S. Günes; A new hybrid method based on the fuzzyartificial immune system and K-NN algorithm for breast cancer diagnosis Comput Biol Med, 37 (3) (2007), pp. 415-423
  11. F.A. Spanhol, L.S. Oliveira, C. Petitjean, L. Heutte; A dataset for breast cancer histopathological image classification. IEEE Trans Biomed Eng, 63 (7) (2016), pp. 1455-1462.
  12. A. Chon, N. Balachandra, P. Lu, Deep convolutional neural networks for lung cancer detection, Standford University.
  13. A.A. Cruz-Roa, J.E.A. Ovalle, A. Madabhushi, F.A.G. Osorio; A deep learning architecture for image representation, visual interpretability and automated basal-cell carcinoma cancer detection. Medical image computing and computer-assisted intervention - (MICCAI) 2013 - 16th international conference, Nagoya, Japan, September 22-26, 2013, proceedings, Part II (2013), pp. 403-410.
  14. M.Veta,P.J.vanDiest,S.M.Willems,H. Wang,A.Madabhushi,A.Cruz- Roa, F.A. González, A.B.L. Larsen, J.S. Vestergaard, A.B. Dahl, D.C. Ciresan, J. Schmidhuber, A. Giusti, L.M. Gambardella, F.B. Tek, T. Walter, C. Wang, S. Kondo, B.J. Matuszewski, F. Prec ioso, V. Snell, J. Kittler, T.E. deCampos, A.M. Khan, N.M. Rajpoot, E. Arkoumani, M.M. Lacle, M.A. Viergever, J.P.W. Pluim; Assessment of algorithms for mitosis detection in breast cancer histopathology images. Med Image Anal, 20 (1) (2015), pp. 237-248.
  15. R. Kumar, R. Srivastava, S. Srivastava; Detection and classification of cancer from microscopic biopsy images using clinically significant and biologically interpretable features. Journal of medical engineering (2015)
  16. E. Andre, K. Brett, A Roberto et al., “Dermatologist-level classification of skin cancer with deep neural networks,” Nature, vol. 542, no. 7639, pp. 115–118, 2017.
  17. M. Grewal, M. M. Srivastava, P. Kumar, and S. Varadarajan, “Radiologist level accuracy using deep learning for haemorrhage detection in CT scans,” 2017.
  18. R. Pranav, Y. H. Awni, H. Masoumeh, B. Codie, and Y. N. Andrew, “Cardiologist-level arrhythmia detection with convolutional neural networks,” 2017.
  19. G. Varun, P. Lily, C. Marc et al., “Development and validation of a deep learning algorithm for detection of diabetic retinopathy in retinal fundus photographs,” JAMA, vol. 316, no. 22, pp. 2402–2410, 2017.
  20. P. Huang, S. Park, R. Yan et al., “Added value of computer-aided CT image features for early lung cancer diagnosis with small pulmonary nodules: a matched case-control study,” Radiology, vol. 286, no. 1, pp. 286–295, 2017.
  21. P. Lakhani and B. Sundaram, “Deep learning at chest radiography: automated classification of pulmonary tuberculosis by using convolutional neural networks,” Radiology, vol. 284, no. 2, pp. 574–582, 2017.
  22. F. D. Demner, M. D. Kohli, M. B. Rosenman et al., “Preparing a collection of radiology examinations for distribution and retrieval,” Journal of the American Medical Informatics Association, vol. 23, no. 2, pp. 304–310, 2015. School of Computer Engineering, KIIT, BBSR
  23. T. I. Mohammad, A. A. Md, T. M. Ahmed, and A. Khalid, “Abnormality detection and localization in chest x-rays using deep convolutional neural networks,” 2017.
  24. Li. Yao, E. Poblenz, D. Dagunts, B. Covington, D. Bernard, and K. Lyman, “Learning to diagnose from scratch by exploiting dependencies among labels,” 2017.
  25. W. Xiaosong, P. Yifan, L. Le, L. Zhiyong, B. Mohammadhadi, and M. S. Ronald, “Chest X-ray8: Hospital-scale chest X-ray database and benchmarks on weakly-supervised classification and localization of common thorax diseases,” 2017.
  26. H. C. Shin, L. Lu, L. Kim, A. Seff, J. Yao, and R. M. Summers, “Interleaved text/image deep mining on a very large- scale radiology database,” in Proceedings of the Conference on Computer Vision and Pattern Recognition (CVPR), Boston, MA, USA, June 2015.
  27. H. C. Shin, L. Lu, L. Kim, A. Seff, J. Yao, and R. M. Summers, “Interleaved text/image deep mining on a large-scale radiology database for automated image interpretation,” Journal of Machine Learning Research, vol. 17, no. 107, pp. 1–31, 2016.
  28. H. Boussaid and I. Kokkinos, “Fast and exact: ADMM-based discriminative shape segmentation with loopy part models,” in Proceedings of Conference on Computer Vision and Pattern Recognition (CVPR), Columbus, OH, USA, June 2014.
  29. U. Avni, H. Greenspan, E. Konen, M. Sharon, and J. Goldberger, “X-ray categorization and retrieval on the organ and pathology level, using patch-based visual words,” Med Imaging, IEEE Transactions, vol. 30, no. 3, 2011.
  30. J. Melendez, G. B. Van, P. Maduskar et al., “A novel multiple-instance learning-based approach to computer-aided detection of tuberculosis on chest x-ray,” IEEE Transactions on Medical Imaging, vol. 34, no. 1, pp. 179–192, 2015.
  31. S. Jaeger, A. Karargyris, S. Candemir et al., “Automatic tuberculosis screening using chest radiographs,” IEEE Transactions on Medical Imaging, vol. 33, no. 2, pp. 233–245, 2014.
  32. Z. Xue, D. You, S. Candemir et al., “Chest x-ray image view classification,” in Proceedings of the Computer-Based Medical Systems IEEE 28th International Symposium, São Paulo, Brazil, June 2015.
  33. 34 S. Hermann, “Evaluation of scan-line optimization for 3d medical image registration,” in Proceedings of Conference on Computer Vision and Pattern Recognition (CVPR), Columbus, OH, USA, June 2014.
  34. Nadjm, Behzad, and Ron H. Behrens. "Malaria: An update for physicians." Infectious Disease Clinics 26, no. 2 (2012): 243-259.
  35. Gollin, Douglas, and Christian Zimmermann. "Malaria: Disease impacts and long-run income differences." (2007).
  36. Star Health Desk, (2018, March 18 Published). Shortage of pathologists inhibits progress on UHC.
  37. Chaity, A. Z. (2017, December 13 Published). Bangladeshis flock to Indian, Thai hospitals in huge numbers. Dhaka Tribune
  38. 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. "A survey on deep learning in medical image analysis." Medical image analysis 42 (2017): 60-88.
  39. Liang, Zhaohui, Andrew Powell, Ilker Ersoy, Mahdieh Poostchi, Kamolrat Silamut, Kannappan Palaniappan, Peng Guo et al. "CNN-based image analysis for malaria diagnosis." In 2016 IEEE International Conference on Bioinformatics and Biomedicine (BIBM), pp. 493-496. IEEE, 2016.
  40. Krizhevsky, Alex, and Geoff Hinton. "Convolutional deep belief networks on cifar- 10." Unpublished manuscript 40, no. 7 (2010).
  41. Dong, Yuhang, Zhuocheng Jiang, Hongda Shen, W. David Pan, Lance A. Williams, Vishnu VB Reddy, William H. Benjamin, and Allen W. Bryan. "Evaluations of deep convolutional neural networks for automatic identification of malaria-infected cells." In 2017 IEEE EMBS International Conference on Biomedical & Health Informatics (BHI), pp. 101-104. IEEE, 2017.
  42. LeCun, Yann. "LeNet-5, convolutional neural networks." (2015)
  43. Krizhevsky, Alex, Ilya Sutskever, and Geoffrey E. Hinton. "Imagenet classification with deep convolutional neural networks." In Advances in neural information processing systems, pp. 1097-1105. 2012.
  44. Szegedy, Christian, Wei Liu, Yangqing Jia, Pierre Sermanet, Scott Reed, Dragomir Anguelov, Dumitru Erhan, Vincent Vanhoucke, and Andrew Rabinovich. "Going deeper with convolutions." In Proceedings of the IEEE conference on computer vision and pattern recognition, pp. 1-9. 2015.
  45. Hung, Jane, and Anne Carpenter. "Applying faster R-CNN for object detection on malaria images." In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition Workshops, pp. 56-61. 2017.
  46. Deng, Jia, Wei Dong, Richard Socher, Li-Jia Li, Kai Li, and Li Fei-Fei. "Imagenet: A large-scale hierarchical image database." In 2009 IEEE conference on computer vision and pattern recognition, pp. 248-255. Ieee, 2009. `
  47. Bibin, Dhanya, Madhu S. Nair, and P. Punitha. "Malaria parasite detection from peripheral blood smear images using deep belief networks." IEEE Access 5 (2017): 9099- 9108.
  48. Lee, Honglak, Roger Grosse, Rajesh Ranganath, and Andrew Y. Ng. "Convolutional deep belief networks for scalable unsupervised learning of hierarchical representations." In Proceedings of the 26th annual international conference on machine learning, pp. 609-616. ACM, 2009.
  49. Salakhutdinov, Ruslan, and Geoffrey Hinton. "Deep Boltzmann machines." In Artificial intelligence and statistics, pp. 448-455. 2009.
  50. Carreira-Perpinan, Miguel A., and Geoffrey E. Hinton. "On contrastive divergence learning." In Aistats, vol. 10, pp. 33-40. 2005.
  51. Razzak, Muhammad Imran, and Saeeda Naz. "Microscopic blood smear segmentation and classification using deep contour aware CNN and extreme machine learning." In 2017 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), pp. 801-807. IEEE, 2017.
  52. Kantorov, Vadim, Maxime Oquab, Minsu Cho, and Ivan Laptev. "Contextlocnet: Contextaware deep network models for weakly supervised localization." In European Conference on Computer Vision, pp. 350-365. Springer, Cham, 2016.
  53. Huang, Guang-Bin, Qin-Yu Zhu, and Chee-Kheong Siew. "Extreme learning machine: theory and applications." Neurocomputing 70, no. 1-3 (2006): 489-501.
  54. Mehanian, Courosh, Mayoore Jaiswal, Charles Delahunt, Clay Thompson, Matt Horning, Liming Hu, Travis Ostbye et al. "Computer-automated malaria diagnosis and quantitation using convolutional neural networks." In Proceedings of the IEEE International Conference on Computer Vision, pp. 116-125. 2017.
  55. Var, Esra, and F. Boray Tek. "Malaria Parasite Detection with Deep Transfer Learning." In 2018 3rd International Conference on Computer Science and Engineering (UBMK), pp. 298302. IEEE, 2018.
  56. Rajaraman, Sivaramakrishnan, Sameer K. Antani, Mahdieh Poostchi, Kamolrat Silamut, Md A. Hossain, Richard J. Maude, Stefan Jaeger, and George R. Thoma. "Pretrained convolutional neural networks as feature extractors toward improved malaria parasite detection in thin blood smear images." PeerJ 6 (2018): e4568.
  57. Shen, Hongda, W. David Pan, Yuhang Dong, and Mohammad Alim. "Lossless compression of curated erythrocyte images using deep autoencoders for malaria infection diagnosis." In 2016 Picture Coding Symposium (PCS), pp. 1-5. IEEE, 2016.
  58. Mohanty, Itishree, P. A. Pattanaik, and Tripti Swarnkar. "Automatic Detection of Malaria Parasites Using Unsupervised Techniques." In International Conference on ISMAC in Computational Vision and Bio-Engineering, pp. 41-49. Springer, Cham, 2018
  59. Park, Han Sang, Matthew T. Rinehart, Katelyn A. Walzer, Jen-Tsan Ashley Chi, and Adam Wax. "Automated detection of P. falciparum using machine learning algorithms with quantitative phase images of unstained cells." PloS one 11, no. 9 (2016): e0163045.
  60. A. Krizhevsky, I. Sutskever, and G. E. Hinton, "Imagenet classification with deep convolutional neural networks," in Advances in neural information processing systems, 2012, pp. 1097-1105.
  61. L. Yu, H. Chen, Q. Dou, J. Qin, and P.-A. J. I. t. o. m. i. Heng, "Automated melanoma recognition in dermoscopy images via very deep residual networks," vol. 36, no. 4, pp. 9941004, 2017.
  62. H. Haenssle et al., "Man against machine: diagnostic performance of a deep learning convolutional neural network for dermoscopic melanoma recognition in comparison to 58 dermatologists," vol. 29, no. 8, pp. 1836-1842, 2018.
  63. S. S. Han, M. S. Kim, W. Lim, G. H. Park, I. Park, and S. E. J. J. o. I. D. Chang, "Classification of the Clinical Images for Benign and Malignant Cutaneous Tumors Using a Deep Learning Algorithm," 2018.
  64. U.-O. Dorj, K.-K. Lee, J.-Y. Choi, M. J. M. T. Lee, and Applications, "The skin cancer classification using deep convolutional neural network," pp. 1-16, 2018.
  65. A. Esteva et al., "Dermatologist-level classification of skin cancer with deep neural networks," vol. 542, no. 7639, p. 115, 2017.
  66. www.google.com - The world’s information
  67. www.kaggle.com - The world's largest data science community
  68. www.tensorflow.org - open-source machine-learning platform
  69. Bhavna Arora, et al. “Real-Time Cardiovascular Disease Prediction Using Machine Learning.” Nternational Journal for Research in Engineering Application & Management (IJREAM), vol. 7, no. 2, May 2021, p. 5.

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Published

2023-04-30

Issue

Section

Research Articles

How to Cite

[1]
Vedant Jadhav, Neeraj Chettiar, Saheel Chavan, Smit Mhatre, Bhavna Arora, " Detectrozen ( Disease Detection ), IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 9, Issue 2, pp.570-581, March-April-2023. Available at doi : https://doi.org/10.32628/CSEIT2390283