Blood group detection using ML classifier

https://doi.org/10.53730/ijhs.v6nS1.5830

Authors

  • Suresh Dannana GMR Institute of Technology, Rajam, Andhra Pradesh, India
  • DY Vara Prasad GMR Institute of Technology, Rajam, Andhra Pradesh, India

Keywords:

Blood group, Rh type, Microscopic image, SVM, Histogram

Abstract

Determining blood types is very important during emergency situations before giving a blood transfusion. Currently, tests that are performed manually by technicians can lead to human error. As the tests are performed manually, if an inappropriate blood group is detected it can result in the death of an individual. Blood type determination in a short time and without human error is very essential. Many methods are employed which aims at determining the type of blood. The first method developed is determination of blood type using fiber optics. In this method, optical signals are fed into blood sample depending upon the optical variations of different blood groups the corresponding blood group is detected. But, this method fails to find the Rh (positive and negative) type of blood group. The second method employed is classification of blood type by microscopic images. Initially image processing is performed by histogram equalization, and then corresponding blood group is analyzed by Quantification Techniques. In this Technique, the major disadvantage lies in the inaccurate detection of agglutination. In order to avoid these disadvantages a new method Blood group detection using an ML classifier, Support Vector Machine (SVM) is proposed. 

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References

P. Sturgeon, “Automation: its introduction to the field of blood group serology”, Immunohematology Journal of Blood Group Serology and Education, Volume 17, Number 4, pp. 100-105, 2001.

A. Dada, Daniel Beck and Gerd Schimitz, “Automation and Data Processing in Blood Banking Using the Ortho Autocued in nova System”, Transfus Med Hemother, volume 5, Number 34, pp. 341-346, Sept 2007.

K. Satoh, Y. Itoh, “ABO blood grouping by 4SNPs analyses using an ABI PRISM 3100 genetic analyzer”, International Congress Series volume 5, number 12, pp. 49-51, 2009.

P. A. Berlitz, “Blood Group Detection using QCM Biosensors”, 5th European IFMBE Conference, IFMBE Proceedings, Volume 6, number 37, pp. 1039–1042, 2011.

T. M. Selvakumari, “Blood Group Detection Using Fiber Optics”, Armenian Journal of Physics, volume 4, number 3, pp. 165-168, 2011.

A. Ferraz, Ana, “Automatic system for determining of blood type using image processing technique”, IEEE 3rd Portuguese Meeting in Bioengineering (ENBENG), Number 13, volume 14, 2013.

G. J. Edelman, “Hyperspectral imaging of the crime scene for detection and identification of blood stains”, Department of Biomedical Engineering, volume 8743, number 87430A, pp. 1-7, 2013.

S. M. Nazia Fathima, “Classification of blood types by microscope color images”, International Journal of Machine Learning and Computing, volume 3, Number 4, pp. 376-379, August 2013.

T. Zarifi, Mahsa Malek, “FPGA implementation of image processing technique for blood samples characterization”, Computers and Electrical Engineering, Volume 40, Number 5, pp. 1750-1757, July 2014.

R. Priyadharshini, S. Ramya and S. Kalaiyarasi, “A Novel Approach In Identification of Blood Group Using Laser Technology”, International journal of research in Engineering and Technology, volume 7, elSSN:2319-1163, plSSN:2321-7308, pp. 20-25, 2014.

A. B. Krishnan, K. P. Peeyush Amrita, “Blood Group Determination Using Vivado System Generator in Zynq SoC”, 7th World Congress on Bioengineering IFMBE Proceedings, volume 5, number 4, pp. 166-169,2015.

Prof. R. A. Rathod, Rubeena A Pathan, “Determination and Classification of Human Blood Types using SIFT Transform and SVM Classifier”, AIP Conference Proceedings, volume 5, number 9, pp. 8467-8473, 2016.

A. Mujahid, F. L. Dickert, “Blood group typing from classical strategies to the application of synthetic antibodies generated by molecular imprinting”, IEEE Transactions on blood group type using image processing, volume 16, number 51, pp 1-17,2016.

Y. Dong, W. Fu, Z. Zhou, N. Chen, M. Liu and S. Chen, “ABO Blood Group Detection Based on Image Processing Technology”, 2nd International Conference on Image, Vision and Computing, volume 6, number 17, pp 655-659, 2017.

S. Rahman, Md Rahman, Fariha Ashraf Khan, Shabiba Binte Shahjahan and Khairun Nahar, “Blood Group Detection using Image Processing Techniques”, International Journal of Engineering And Computer Science (IJECS), vol. 5, no. 10, pp. 18635–18639, Oct. 2016.

A. Narkis Banu, V. Kalpana, “An Automatic system to detect human blood group of many individuals in a parallel manner using image processing”, International Journal of Pure and Applied Mathematics, Volume 8, No. 20, pp. 3119-3127, 2018.

Amol Dhande, Pragati Bhoir and Varsha Gade, “Identifying the blood group using Image Processing”, International Research Journal of Engineering and Technology (IRJET), volume 5, number 3, pp. 2639-2644, 2018.

J.C.D. Cruz, R.G. Garcia, A.V.C. Diaz, A.M.B. Dino, D.J.I. Nicdao, and C.S.S. Venancio, “ Portable Blood Typing Device Using Image Analysis”, IEEE International Conference on Consumer Electronics - Asia (ICCE-Asia), volume 2, number 19, pp. 141-145, 2019.

P. Jayakumar, S. Padmanabhan, K. Suthendran, Yeddu Nitish Kumarand Mada Sujith, “Identification and Analysis of Blood Group with Digital Microscope Using Image Processing”, IOP Conference Series: Materials Science and Engineering, volume 20, number 3, pp. 1-6,2020.

J. Stella, “Blood Group Identification using FPGA”, Turkish Journal of Computer and Mathematics Education, volume 12, number 10, pp. 168-176,2021.

Russell Rudolph, “Machine Learning: Step-By-Step Guide to Implement Machine Learning Algorithms with Python”, (Knxb), 2020.

Published

12-04-2022

How to Cite

Dannana, S., & Prasad, D. Y. V. (2022). Blood group detection using ML classifier. International Journal of Health Sciences, 6(S1), 4395–4408. https://doi.org/10.53730/ijhs.v6nS1.5830

Issue

Section

Peer Review Articles