Predicting Blood Type: Assessing Model Performance with ROC Analysis
DOI:
https://doi.org/10.56294/dm2025895Keywords:
Biometrics, Fingerprint Patterns, ABO Blood Group, Forensic Science, Personal Identification and Correlation AnalysisAbstract
Introduction: Personal identification is a critical aspect of forensic sciences, security, and healthcare. While conventional biometrics systems such as DNA profiling and iris scanning offer high accuracy, they are time-consuming and costly.
Objectives: This study investigates the relationship between fingerprint patterns and ABO blood group classification to explore potential correlations between these two traits.
Methods: The study analyzed 200 individuals, categorizing their fingerprints into three types: loops, whorls, and arches. Blood group classification was also recorded. Statistical analysis, including chi-square and Pearson correlation tests, was used to assess associations between fingerprint patterns and blood groups.
Results: Loops were the most common fingerprint pattern, while blood group O+ was the most prevalent among the participants. Statistical analysis revealed no significant correlation between fingerprint patterns and blood groups (p > 0.05), suggesting that these traits are independent.
Conclusions: Although the study showed limited correlation between fingerprint patterns and ABO blood groups, it highlights the importance of future research using larger and more diverse populations, incorporating machine learning approaches, and integrating multiple biometric signals. This study contributes to forensic science by emphasizing the need for rigorous protocols and comprehensive investigations in personal identification.
References
1. Kapoor S, Sharma A, Verma A, Dhull V, Goyal C. A Comparative Study on Deep Learning and Machine Learning Models for Human Action Recognition in Aerial Videos. Int Arab J Inf Technol [Internet]. 2023;20(4). Available from: https://iajit.org/upload/files/A-Comparative-Study-on-Deep-Learning-and-Machine-Learning-Models-for-Human-Action-Recognition-in-Aerial-Videos.pdf
2. Alzboon MS, Al-Batah M, Alqaraleh M, Abuashour A, Bader AF. A Comparative Study of Machine Learning Techniques for Early Prediction of Diabetes. In: 2023 IEEE 10th International Conference on Communications and Networking, ComNet 2023 - Proceedings. 2023. p. 1–12.
3. Alzboon MS, Al-Batah M, Alqaraleh M, Abuashour A, Bader AF. A Comparative Study of Machine Learning Techniques for Early Prediction of Prostate Cancer. In: 2023 IEEE 10th International Conference on Communications and Networking, ComNet 2023 - Proceedings. 2023.
4. Al-Shanableh N, Alzyoud M, Al-Husban RY, Alshanableh NM, Al-Oun A, Al-Batah MS, et al. Advanced ensemble machine learning techniques for optimizing diabetes mellitus prognostication: A detailed examination of hospital data. Data Metadata. 2024;3:363.
5. Al-Batah MS, Salem Alzboon M, Solayman Migdadi H, Alkhasawneh M, Alqaraleh M. Advanced Landslide Detection Using Machine Learning and Remote Sensing Data. Data Metadata [Internet]. 2024 Oct;1. Available from: https://dm.ageditor.ar/index.php/dm/article/view/419/782
6. Alqaraleh M, Alzboon MS, Al-Batah M, Saleh O, Migdadi HS, Elrashidi A, et al. Advanced Machine Learning Models for Real-Time Drone and Bird Differentiation in Aerial Surveillance Systems. In: 2024 25th International Arab Conference on Information Technology (ACIT) [Internet]. IEEE; 2024. p. 1–8. Available from: https://ieeexplore.ieee.org/document/10877066/
7. Muhyeeddin A, Mowafaq SA, Al-Batah MS, Mutaz AW. Advancing Medical Image Analysis: The Role of Adaptive Optimization Techniques in Enhancing COVID-19 Detection, Lung Infection, and Tumor Segmentation. LatIA [Internet]. 2024 Sep;2(74):74. Available from: https://latia.ageditor.uy/index.php/latia/article/view/74
8. Mowafaq SA, Alqaraleh M, Al-Batah MS. AI in the Sky: Developing Real-Time UAV Recognition Systems to Enhance Military Security. Data Metadata. 2024;3.
9. Wahed MA, Alqaraleh M, Alzboon MS, Al-Batah MS. AI Rx: Revolutionizing Healthcare Through Intelligence, Innovation, and Ethics. Semin Med Writ Educ [Internet]. 2025 Jan 1;4:35. Available from: https://mw.ageditor.ar/index.php/mw/article/view/35
10. Alzboon MS, Alqaraleh M, Wahed MA, Alourani A, Bader AF, Al-Batah M. AI-Driven UAV Distinction: Leveraging Advanced Machine Learning. In: 2024 7th International Conference on Internet Applications, Protocols, and Services (NETAPPS) [Internet]. IEEE; 2024. p. 1–7. Available from: http://dx.doi.org/10.1109/netapps63333.2024.10823488
11. Banikhalaf M, Alomari SA, Alzboon MS. An advanced emergency warning message scheme based on vehicles speed and traffic densities. Int J Adv Comput Sci Appl. 2019;10(5):201–5.
12. Abdel Wahed M, Alqaraleh M, Salem Alzboon M, Subhi Al-Batah M. Application of Artificial Intelligence for Diagnosing Tumors in the Female Reproductive System: A Systematic Review. Multidiscip [Internet]. 2025 Jan 1;3:54. Available from: https://multidisciplinar.ageditor.uy/index.php/multidisciplinar/article/view/54
13. Wahed MA, Alqaraleh M, Alzboon MS, Al-Batah MS. Application of Artificial Intelligence for Diagnosing Tumors in the Female Reproductive System: A Systematic Review. Multidiscip. 2025;3:54.
14. Alqaraleh M, Al-Batah M, Salem Alzboon M, Alzaghoul E. Automated quantification of vesicoureteral reflux using machine learning with advancing diagnostic precision. Data Metadata. 2025;4:460.
15. Wahed MA, Alzboon MS, Alqaraleh M, Ayman J, Al-Batah M, Bader AF. Automating Web Data Collection: Challenges, Solutions, and Python-Based Strategies for Effective Web Scraping. In: 2024 7th International Conference on Internet Applications, Protocols, and Services, NETAPPS 2024. 2024.
16. Mowafaq Salem Alzboon M. Mahmuddin ASCA. Challenges and Mitigation Techniques of Grid Resource Management System. In: National Workshop on FUTURE INTERNET RESEARCH (FIRES2016). 2016. p. 1–6.
17. Alrjoob HM, Alazaidah R, Batyha R, Khafajeh H, Elsoud EA, Saeb Al-Sherideh A, et al. Classifying Psychiatric Patients Using Machine Learning. In: 2024 25th International Arab Conference on Information Technology (ACIT) [Internet]. IEEE; 2024. p. 1–9. Available from: https://ieeexplore.ieee.org/document/10877074/
18. Al-Batah M, Salem Alzboon M, Alqaraleh M, Ahmad Alzaghoul F. Comparative Analysis of Advanced Data Mining Methods for Enhancing Medical Diagnosis and Prognosis. Data Metadata. 2024;3.
19. Subhi Al-Batah M, Alqaraleh M, Salem Alzboon M, Alourani A. Comparative performance of ensemble models in predicting dental provider types: insights from fee-for-service data. Data Metadata [Internet]. 2025 Mar 29;4:750. Available from: https://dm.ageditor.ar/index.php/dm/article/view/750
20. Abuashour A, Salem Alzboon M, Kamel Alqaraleh M, Abuashour A. Comparative Study of Classification Mechanisms of Machine Learning on Multiple Data Mining Tool Kits. Am J Biomed Sci Res 2024 [Internet]. 2024;22(1):1. Available from: www.biomedgrid.com
21. Wahed MA, Alzboon MS, Alqaraleh M, Halasa A, Al-Batah M, Bader AF. Comprehensive Assessment of Cybersecurity Measures: Evaluating Incident Response, AI Integration, and Emerging Threats. In: 2024 7th International Conference on Internet Applications, Protocols, and Services (NETAPPS) [Internet]. IEEE; 2024. p. 1–8. Available from: https://ieeexplore.ieee.org/document/10823603/
22. Wahed MA, Alzboon MS, Alqaraleh M, Halasa A, Al-Batah M, Bader AF. Comprehensive Assessment of Cybersecurity Measures: Evaluating Incident Response, AI Integration, and Emerging Threats. In: 2024 7th International Conference on Internet Applications, Protocols, and Services, NETAPPS 2024. 2024.
23. Alzboon MS, Alqaraleh M, Al-Batah MS. Diabetes Prediction and Management Using Machine Learning Approaches. Data Metadata [Internet]. 2025; Available from: https://doi.org/10.56294/dm2025545
24. Arif S, Alzboon MS, Mahmuddin M. Distributed quadtree overlay for resource discovery in shared computing infrastructure. Adv Sci Lett. 2017;23(6):5397–401.
25. Putri AK, Alzboon MS. Doctor Adam Talib’s Public Relations Strategy in Improving the Quality of Patient Service. Sinergi Int J Commun Sci. 2023;1(1):42–54.
26. Mahmuddin M, Alzboon MS, Arif S. Dynamic network topology for resource discovery in shared computing infrastructure. Adv Sci Lett. 2017;23(6):5402–5.
27. Alzboon MS, Al-Batah MS, Alqaraleh M, Abuashour A, Bader AFH. Early Diagnosis of Diabetes: A Comparison of Machine Learning Methods. Int J online Biomed Eng. 2023;19(15):144–65.
28. Alqaraleh M, Subhi Al-Batah M, Salem Alzboon M, Alzboon F, Alzboon L, Nayef Alamoush M. Echoes in the Genome: Smoking’s Epigenetic Fingerprints and Bidirectional Neurobiological Pathways in Addiction and Disease. Semin Med Writ Educ [Internet]. 2024 Dec 30;3. Available from: https://doi.org/10.56294/mw2024.585
29. Alqaraleh M. Enhanced Resource Discovery Algorithm for Efficient Grid Computing. In: Proceedings of the 3rd International Conference on Applied Artificial Intelligence and Computing, ICAAIC 2024. 2024. p. 925–31.
30. Wahed MA, Alzboon MS, Alqaraleh M, Al-Batah M, Bader AF, Wahed SA. Enhancing Diagnostic Precision in Pediatric Urology: Machine Learning Models for Automated Grading of Vesicoureteral Reflux. In: 2024 7th International Conference on Internet Applications, Protocols, and Services, NETAPPS 2024 [Internet]. IEEE; 2024. p. 1–7. Available from: http://dx.doi.org/10.1109/netapps63333.2024.10823509
31. Al-Batah MS, Alzboon MS, Alzyoud M, Al-Shanableh N. Enhancing Image Cryptography Performance with Block Left Rotation Operations. Appl Comput Intell Soft Comput. 2024;2024(1):3641927.
32. Alqaraleh M. Enhancing Internet-based Resource Discovery: The Efficacy of Distributed Quadtree Overlay. In: Proceedings of the 3rd International Conference on Applied Artificial Intelligence and Computing, ICAAIC 2024. 2024. p. 1619–28.
33. Wahed MA, Alqaraleh M, Salem Alzboon M, Subhi Al-Batah M. Evaluating AI and Machine Learning Models in Breast Cancer Detection: A Review of Convolutional Neural Networks (CNN) and Global Research Trends. LatIA [Internet]. 2025 Jan;3:117. Available from: https://latia.ageditor.uy/index.php/latia/article/view/117
34. Shawawreh S, Alomari SA, Alzboon MS, Al Salaimeh S. Evaluation of knowledge quality in the E -learning system. Int J Eng Res Technol. 2019;12(4):548–53.
35. Alqaraleh M, Salem Alzboon M, Subhi Al-Batah M, Solayman Migdadi H. From Complexity to Clarity: Improving Microarray Classification with Correlation-Based Feature Selection. LatIA [Internet]. 2025 Jan 1;3:84. Available from: https://latia.ageditor.uy/index.php/latia/article/view/84
36. Alqaraleh M, Subhi Al-Batah M, Salem Alzboon M, Alzboon F, Alzboon L, Nayef Alamoush M. From Puffs to Predictions: Leveraging AI, Wearables, and Biomolecular Signatures to Decode Smoking’s Multidimensional Impact on Cardiovascular Health. Semin Med Writ Educ [Internet]. 2024 Dec 30;3. Available from: https://doi.org/10.56294/mw2024.670
37. Al-Batah M, Zaqaibeh B, Alomari SA, Alzboon MS. Gene Microarray Cancer classification using correlation based feature selection algorithm and rules classifiers. Int J online Biomed Eng. 2019;15(8):62–73.
38. Salem Alzboon M, Subhi Al-Batah M, Alqaraleh M, Alzboon F, Alzboon L. Guardians of the Web: Harnessing Machine Learning to Combat Phishing Attacks. Gamification Augment Real [Internet]. 2025 Jan;3:91. Available from: http://dx.doi.org/10.56294/gr202591
39. Alqaraleh M, Alzboon MS, Al-Batah MS, Wahed MA, Abuashour A, Alsmadi FH. Harnessing Machine Learning for Quantifying Vesicoureteral Reflux: A Promising Approach for Objective Assessment. Int J online Biomed Eng. 2024;20(11):123–45.
40. Subhi Al-Batah M, Alqaraleh M, Salem Alzboon M. Improving Oral Cancer Outcomes Through Machine Learning and Dimensionality Reduction. Data Metadata [Internet]. 2025 Jan 2;3. Available from: https://dm.ageditor.ar/index.php/dm/article/view/570
41. Alqaraleh M, Alzboon MS, Al-Batah M, Migdadi HS, Saleh O, Alazaidah R, et al. Innovative Machine Learning Solutions for Automated Kidney Tumor Detection in CT Imaging Through Comparative Analysis. In: 2024 25th International Arab Conference on Information Technology (ACIT) [Internet]. IEEE; 2024. p. 1–9. Available from: https://ieeexplore.ieee.org/document/10876924/
42. Al-Batah MS, Alzboon MS, Alazaidah R. Intelligent Heart Disease Prediction System with Applications in Jordanian Hospitals. Int J Adv Comput Sci Appl. 2023;14(9):508–17.
43. Alzboon MS. Internet of things between reality or a wishing - list : a survey. Int J Eng Technol. 2019;7(June):956–61.
44. Alzboon MS, Qawasmeh S, Alqaraleh M, Abuashour A, Bader AF, Al-Batah M. Machine Learning Classification Algorithms for Accurate Breast Cancer Diagnosis. In: 2023 3rd International Conference on Emerging Smart Technologies and Applications, eSmarTA 2023. 2023.
45. Alzboon MS, Aljarrah E, Alqaraleh M, Alomari SA. Nodexl Tool for Social Network Analysis. Turkish J Comput Math Educ. 2021;12(14):202–16.
46. Subhi Al-Batah M, Alzboon M, Alqaraleh M. Optimizing Genetic Algorithms with Multilayer Perceptron Networks for Enhancing TinyFace Recognition. Data Metadata [Internet]. 2024 Dec 30;3. Available from: https://dm.ageditor.ar/index.php/dm/article/view/594
47. Alqaraleh M, Salem Alzboon M, Mohammad SA-B. Optimizing Resource Discovery in Grid Computing: A Hierarchical and Weighted Approach with Behavioral Modeling. LatIA [Internet]. 2025 Jan;3:97. Available from: https://latia.ageditor.uy/index.php/latia/article/view/97
48. SalemAlzboon, Mowafaq and Arif, Suki and Mahmuddin, M and Dakkak O. Peer to Peer Resource Discovery Mechanisms in Grid Computing : A Critical Review. In: The 4th International Conference on Internet Applications, Protocols and Services (NETAPPS2015). 2015. p. 48–54.
49. Alazaidah R, Samara G, Katrawi A, Hadi W, Al-Safarini MY, Al-Mamoori F, et al. Prediction of Hypertension Disease Using Machine Learning Techniques: Case Study from Jordan. In: 2024 25th International Arab Conference on Information Technology (ACIT) [Internet]. IEEE; 2024. p. 1–6. Available from: https://ieeexplore.ieee.org/document/10877088/
50. Alzboon MS, Subhi Al-Batah M, Alqaraleh M, Alzboon F, Alzboon L. Phishing Website Detection Using Machine Learning. Gamification Augment Real [Internet]. 2025 Jan;3:81. Available from: http://dx.doi.org/10.56294/gr202581
51. Alzboon MS, Al-Batah MS. Prostate Cancer Detection and Analysis using Advanced Machine Learning. Int J Adv Comput Sci Appl. 2023;14(8):388–96.
52. Alzboon MS, Qawasmeh S, Alqaraleh M, Abuashour A, Bader AF, Al-Batah M. Pushing the Envelope: Investigating the Potential and Limitations of ChatGPT and Artificial Intelligence in Advancing Computer Science Research. In: 2023 3rd International Conference on Emerging Smart Technologies and Applications, eSmarTA 2023. 2023.
53. Alqaraleh M, Salem Alzboon M, Subhi Al-Batah M. Real-Time UAV Recognition Through Advanced Machine Learning for Enhanced Military Surveillance. Gamification Augment Real [Internet]. 2025 Jan;3:63. Available from: https://gr.ageditor.ar/index.php/gr/article/view/63
54. Alzboon MS, Mahmuddin M, Arif S. Resource discovery mechanisms in shared computing infrastructure: A survey. In: Advances in Intelligent Systems and Computing. 2020. p. 545–56.
55. Alzboon M. Semantic Text Analysis on Social Networks and Data Processing: Review and Future Directions. Inf Sci Lett. 2022;11(5):1371–84.
56. Alqaraleh M, Alzboon MS, Al-Batah MS. Skywatch: Advanced Machine Learning Techniques for Distinguishing UAVs from Birds in Airspace Security. Int J Adv Comput Sci Appl. 2024;15(11):1065–78.
57. Al-Batah M, Salem Alzboon M, Alqaraleh M. Superior Classification of Brain Cancer Types Through Machine Learning Techniques Applied to Magnetic Resonance Imaging. Data Metadata [Internet]. 2025 Jan 1;4:472. Available from: https://dm.ageditor.ar/index.php/dm/article/view/472
58. Alzboon MS. Survey on Patient Health Monitoring System Based on Internet of Things. Inf Sci Lett. 2022;11(4):1183–90.
59. Abdel Wahed M, Al-Batah M, Salem Alzboon M, Fuad Bader A, Alqaraleh M. Technological Innovations in Autonomous Vehicles: A Focus on Sensor Fusion and Environmental Perception. 2024 7th International Conference on Internet Applications, Protocols, and Services, NETAPPS 2024. 2024.
60. Alzboon MS, Alomari S, Al-Batah MS, Alomari SA, Banikhalaf M. The characteristics of the green internet of things and big data in building safer, smarter, and sustainable cities Vehicle Detection and Tracking for Aerial Surveillance Videos View project Evaluation of Knowledge Quality in the E-Learning System View pr [Internet]. Vol. 6, Article in International Journal of Engineering and Technology. 2017. p. 83–92. Available from: https://www.researchgate.net/publication/333808921
61. Al Tal S, Al Salaimeh S, Ali Alomari S, Alqaraleh M. The modern hosting computing systems for small and medium businesses. Acad Entrep J. 2019;25(4):1–7.
62. Alzboon MS, Al-Shorman HM, Alka’awneh SMN, Saatchi SG, Alqaraleh MKS, Samara EIM, et al. The Role of Perceived Trust in Embracing Artificial Intelligence Technologies: Insights from Jordan’s SME Sector. In: Studies in Computational Intelligence [Internet]. 2024. p. 1–15. Available from: https://link.springer.com/10.1007/978-3-031-74220-0_1
63. Alzboon MS, Al-Shorman HM, Alka’awneh SMN, Saatchi SG, Alqaraleh MKS, Samara EIM, et al. The Role of Perceived Trust in Embracing Artificial Intelligence Technologies: Insights from Jordan’s SME Sector. In: Studies in Computational Intelligence [Internet]. Springer Nature Switzerland; 2024. p. 1–15. Available from: http://dx.doi.org/10.1007/978-3-031-74220-0_1
64. Alzboon MS, Bader AF, Abuashour A, Alqaraleh MK, Zaqaibeh B, Al-Batah M. The Two Sides of AI in Cybersecurity: Opportunities and Challenges. In: Proceedings of 2023 2nd International Conference on Intelligent Computing and Next Generation Networks, ICNGN 2023. 2023.
65. Alomari SA, Alqaraleh M, Aljarrah E, Alzboon MS. Toward achieving self-resource discovery in distributed systems based on distributed quadtree. J Theor Appl Inf Technol. 2020;98(20):3088–99.
66. Al-Oqily I, Alzboon M, Al-Shemery H, Alsarhan A. Towards autonomic overlay self-load balancing. In: 2013 10th International Multi-Conference on Systems, Signals and Devices, SSD 2013. Ieee; 2013. p. 1–6.
67. Alzboon MS, Sintok UUM, Sintok UUM, Arif S. Towards Self-Organizing Infrastructure : A New Architecture for Autonomic Green Cloud Data Centers. ARPN J Eng Appl Sci. 2015;1–7.
68. Alzboon MS, Arif AS, Mahmuddin M. Towards self-resource discovery and selection models in grid computing. ARPN J Eng Appl Sci. 2016;11(10):6269–74.
69. Kukadiya U, Trivedi P, Rathva A, Lakhani C. STUDY OF FINGERPRINT PATTERNS IN RELATIONSHIP WITH BLOOD GROUP AND GENDER IN SAURASHTRA REGION. Int J Anat Res [Internet]. 2020 Jun 5;8(2.3):7564–7. Available from: https://www.ijmhr.org/IntJAnatRes/IJAR.2020.159
70. DR. Y. N. UMRANIYA DYNU, DR. H. H. MODI DHHM, DR. H. K. PRAJAPATI DHKP. Study of Correlation of Finger Print Patterns in Different ABO, Rh Blood Groups. Int J Sci Res [Internet]. 2012 Jun 1;2(9):337–9. Available from: http://theglobaljournals.com/ijsr/file.php?val=September_2013_1378822646_773b1_118.pdf
71. Sivagurunathan A, Subbulakshmi A, Veluramesh S, Anitha NJ. Distribution of ABO & Rh bloog group in relation to dermatoglyphics and BMI. null. 2020;144(April):266–81.
72. Ghimire P, Ghimire S, Khanal A, Khapung A. Gender Specific Correlation between Lip Print, Fingerprint and Blood Groups among Adults aged 20-30 Years attending a Tertiary Health Care Centre. Nepal Med Coll J [Internet]. 2022 Sep 28;24(3):219–26. Available from: https://www.nepjol.info/index.php/nmcj/article/view/48597
73. Prasad DM, . A. Blood Group Detection through Finger Print Images using Image Processing. Int J Res Appl Sci Eng Technol [Internet]. 2023 Jul 31;11(7):1350–4. Available from: https://www.ijraset.com/best-journal/blood-group-detection-through-finger-print-images-using-image-processing
74. Swathi P, Sushmita K, Prof. Kavita V Horadi. Fingerprint Based Blood Group using Deep Learning. Int J Adv Res Sci Commun Technol [Internet]. 2024 Feb 8;699–708. Available from: http://ijarsct.co.in/Paper15393.pdf
75. Kushwaha V, Dev R, Verma S, Awasthi P, Pathak A, Yadav A, et al. Qualitative Analysis of Pattern of Finger Print in Relation to Gender and Blood Group. Indian Internet J Forensic Med Toxicol [Internet]. 2020;18(3and4):47–9. Available from: https://acspublisher.com/journals/index.php/iijfmt/article/view/18359
76. T MAHALAKSHMI, JINCY, PRAVEENA, DR. MAHALINGAM BHUVANESWARI, DR. SATHISH MUTHUKUMAR, DR. MERLIN JAYARAJ. Determination and Correlation of Finger Print Pattern and Blood Grouping in Diabetes Mellitus: An Analytical Study. Indian J Forensic Med Toxicol [Internet]. 2024 Apr 27;18(2):156–62. Available from: https://medicopublication.com/index.php/ijfmt/article/view/20864
77. Harsha L, Jayaraj G. Correlation of lip print, finger print and blood groups in a Tamil Nadu based population. J Pharm Sci Res. 2015;7(9):795–9.
78. Patel PP, Christian N, Chauhan DJ, Ms, Varadiya A. Evaluation of Correlation between Blood Group System & Fingerprint Classification System in both female and male. null. 2021.
Downloads
Published
Issue
Section
License
Copyright (c) 2025 Malik A. Altayar, Muhyeeddin Alqaraleh, Mowafaq Salem Alzboon, Wesam T. Almagharbeh (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.
The article is distributed under the Creative Commons Attribution 4.0 License. Unless otherwise stated, associated published material is distributed under the same licence.