Author(s): Shashikant B. Bagade, Kiran D. Patil, Ketan V. Hatware, Prashant L. Pingale, Sonali V. Chaudhari Mhatre

Email(s): prashant.pingale@gmail.com

DOI: 10.52711/0974-360X.2023.00898   

Address: Shashikant B. Bagade1, Kiran D. Patil2, Ketan V. Hatware3, Prashant L. Pingale4*, Sonali V. Chaudhari Mhatre5
1,2,3School of Pharmacy and Technology Management, NMIMS, Shirpur, Maharashtra, 425405, India
4GES’s Sir Dr. M. S. Gosavi College of Pharmaceutical Education and Research, Nashik - 422005, Maharashtra, India
5Department of Petrochemical Engineering, Dr. Babasaheb Ambedkar Technological University, Lonere - 402103, Raigad, Maharashtra, India
*Corresponding Author

Published In:   Volume - 16,      Issue - 11,     Year - 2023


ABSTRACT:
Biometric authentication is an efficient system associated with a person’s behavioural and physiological characteristics. The palm vein technology is a promising technology to recognize and identify the vein patterns of a person’s palm as a personal identification tool. The vein patterns of the palm exist beneath the skin and hence, it is very difficult to forge. Moreover, the palm vein patterns for every patient, including twins are different and unique. However, this pattern is persistent throughout the lifetime of the patient. This technology can be ideally useful for recognizing specific patients and keeping their records more accurately. The accuracy of this technology is not affected by factors like skin diseases, injuries, surface and subcutaneous nature of the palm. The technology is non-invasive and aseptic for use in public areas. This biometric authentication system will be useful for inpatients, outpatients and patients in ICU, emergency wards, even unconscious patients too. As there are lots of similarities in many patient’s names, birth dates, etc. there are many chances of errors in the authentication process. These errors lead to mismatch and interchange of the data resulting in serious issues. In order to minimize all these problems, palm vein technology will be the best tool. In this review, the authors discussed palm vein technology, its significance and the way this system is applicable in biometric authentication of patients and their safety.


Cite this article:
Shashikant B. Bagade, Kiran D. Patil, Ketan V. Hatware, Prashant L. Pingale, Sonali V. Chaudhari Mhatre. Palm Vein Technology: A Biometric Intelligence System for patients Authentication and Safety. Research Journal of Pharmacy and Technology. 2023; 16(11):5554-1. doi: 10.52711/0974-360X.2023.00898

Cite(Electronic):
Shashikant B. Bagade, Kiran D. Patil, Ketan V. Hatware, Prashant L. Pingale, Sonali V. Chaudhari Mhatre. Palm Vein Technology: A Biometric Intelligence System for patients Authentication and Safety. Research Journal of Pharmacy and Technology. 2023; 16(11):5554-1. doi: 10.52711/0974-360X.2023.00898   Available on: https://rjptonline.org/AbstractView.aspx?PID=2023-16-11-92


REFERENCES:
1.    Caragea D, Bao J, Pathak J, Silvescu A, Andorf C, Dobbs D, Honavar V. Information integration from semantically heterogeneous biological data sources. In 16th International Workshop on Database and Expert Systems Applications (DEXA'05). 2005; 580-584). IEEE. doi.org/10.1109/DEXA.2005.118
2.    Walia RR, El-Manzalawy Y, Honavar VG, Dobbs D. Sequence-Based Prediction of RNA-Binding Residues in Proteins. Methods in Molecular Biology (Clifton, N.J.). 2017; 1484: 205–235.  doi.org/10.1007/978-1-4939-6406-2_15  
3.    Yasser EM, Hsieh TY, Shivakumar M, Kim D, Honavar V. Min-redundancy and max-relevance multi-view feature selection for predicting ovarian cancer survival using multi-omics data. BMC Medical Genomics. 2018;11(3): 19-31. doi.org/10.1186/s12920-018-0388-0
4.    Prabhakar S, Pankanti S, Jain AK. Biometric recognition: Security and privacy concerns. IEEE Security and Privacy. 2003; 1(2): 33-42. doi.org/ 10.1109/MSECP.2003.1193209
5.    He L, Madathil SC, Oberoi A, Servis G, Khasawneh MT. A systematic review of research design and modeling techniques in inpatient bed management. Computers and Industrial Engineering. 2019; 127:451-466. doi.org/10.1016/j.cie.2018.10.033
6.    Prasanalakshmi B, Kannammal A, Gomathi B, Deepa K, Sridevi R. Biometric cryptosystem involving two traits and palm vein as key. Procedia Engineering. 2012; 30: 303-310. doi.org/ 10.1016/j.proeng.2012.01.865
7.    Chen B, Chandran V. Biometric based cryptographic key generation from faces. In 9th Biennial Conference of the Australian Pattern Recognition Society on Digital Image Computing Techniques and Applications (DICTA 2007). 2007. 394-401. doi.org/ 10.1109/DICTA.2007.4426824
8.    Czyżewski A, Bratoszewski P, Hoffmann P, Lech M, Szczodrak M. The project IDENT: Multimodal biometric system for bank client identity verification. In International Conference on Multimedia Communications, Services and Security, Springer, Cham. 2017. 16-32.
9.    Sarkar I, Alisherov F, Kim TH, Bhattacharyya D. Palm vein authentication system: a review. International Journal of Control and Automation. 2010; 3(1): 27-34.
10.    Ozair FF, Jamshed N, Sharma A, Aggarwal P. Ethical issues in electronic health records: A general overview. Perspectives in Clinical Research. 2015; 6(2): 73. doi.org/ 10.4103/2229-3485.153997
11.    Bharathi S, Sudhakar R. Biometric recognition using finger and palm vein images. Soft Computing. 2019; 23(6): 1843-1855. doi.org/10.1007/s00500-018-3295-6
12.    Rattani A, Kisku DR, Bicego M, Tistarelli M. Feature level fusion of face and fingerprint biometrics. In 2007 First IEEE International Conference on Biometrics: Theory, Applications, and Systems. 2007. 1-6. doi.org/ 10.1109/BTAS.2007.4401919.
13.    Cancian P, Di Donato GW, Rana V, Santambrogio MD. An embedded Gabor-based palm vein recognition system. In 2017 IEEE EMBS International Conference on Biomedical and Health Informatics (BHI). 2017. 405-408. doi.org/ 10.1109/BHI.2017.7897291.
14.    Ogunbanjo GA, van Bogaert DK. Ethics in health care: healthcare fraud. South African Family Practice, 2014; 56(1): S10-S13.
15.    Prasanthi BV, Hussain SM, Kanakam P, Chakravarthy ASN. Palm vein biometric technology: An approach to upgrade security in ATM transactions. International Journal of Computer Applications. 2015; 112(9): 1-5.
16.    Thimbleby H, Lewis A, Williams J. Making healthcare safer by understanding, designing and buying better IT. Clinical Medicine. 2015; 15(3): 258-262. doi.org/ 10.7861/clinmedicine.15-3-258
17.    Keane BE, Tikhonov KB, World Health Organization. Manual on radiation protection in hospitals and general practice. 1975. Vol. 3, X-ray diagnosis. World Health Organization. https://apps.who.int/iris/handle/10665/39920  (Retrieved on May 10, 2021)
18.    Mallikarjuna A, Madhavi S. Palm Vein Technology Security. International Journal of Advanced Research in Computer Science and Software Engineering. 2013; 3(7):1258-1263.
19.    Jiaqiang W, Ming Y, Hanbing Q, Bin L. Analysis of palm vein image quality and recognition with different distance. In 2013 Fourth International Conference on Digital Manufacturing and Automation. 2013; 215-218. doi.org/ 10.1109/ICDMA.2013.50
20.    Harris AC. The Pregnancy Journal: A Day-to-day Guide to a Healthy and Happy Pregnancy. Chronicle Books LLC, San Francisco, US. 4th ed. 2016.
21.    Ghosh P, Dutta R. A new approach towards biometric authentication system in palm vein domain. Votrix Publication. 2012.
22.    Padilla P, Gorriz JM, Ramirez J, Chaves R, Segovia F, Alvarez I, Puntonet CG. Alzheimer's disease detection in functional images using 2D Gabor wavelet analysis. Electronics Letters. 2010; 46(8)L: 556-558. doi.org/10.1049/el.2010.0219
23.    Wang L, Leedham G. Near-and far-infrared imaging for vein pattern biometrics. In 2006 IEEE International Conference on Video and Signal Based Surveillance. 2006: 52-53. doi.org/10.1109/AVSS.2006.80
24.    Kourkoumelis N, Tzaphlidou M. Medical safety issues concerning the use of incoherent infrared light in biometrics. In International Conference on Ethics and Policy of Biometrics, Springer, Berlin, Heidelberg. 2010: 121-126.
25.    Wang L, Leedham G, Cho SY. Infrared imaging of hand vein patterns for biometric purposes. IET Computer Vision. 2007; 1(3): 113-122. doi.org/10.1049/iet-cvi:20070009
26.    Cross JM, Smith CL. Thermographic imaging of the subcutaneous vascular network of the back of the hand for biometric identification. In Proceedings The Institute of Electrical and Electronics Engineers. 29th Annual 1995 International Carnahan Conference on Security Technology. 1995: 20-35. doi.org/10.1109/CCST.1995.524729
27.    Henderson TA, Morries LD. Near-infrared photonic energy penetration: can infrared phototherapy effectively reach the human brain?. Neuropsychiatric Disease and Treatment. 2015;11: 2191-2208. doi.org/10.2147/NDT.S78182
28.    Bobdey S, Jain A, Balasubramanium G. Epidemiological review of laryngeal cancer: An Indian perspective. Indian journal of medical and paediatric oncology: official journal of Indian Society of Medical and Paediatric Oncology. 2015; 36(3): 154-160. doi.org/10.4103/0971-5851.166721
29.    Lippi G, Chiozza L, Mattiuzzi C, Plebani M. Patient and sample identification. Out of the maze?. Journal of Medical Biochemistry. 2017; 36(2): 107-112. doi.org/ 10.1515/jomb-2017-0003
30.    Zhou Y, Kumar A. Contactless palm vein identification using multiple representations. In 2010 Fourth IEEE International Conference on Biometrics: Theory, Applications and Systems (BTAS). 2010; 1-6. doi.org/10.1109/BTAS.2010.5634470
31.    Soni M, Gupta S, Rao MS, Gupta P. An Efficient Vein Pattern-Based Recognition System. In 2010 Fourth International Conference on Emerging Security Information, Systems and Technologies. 2010; 234-239. doi.org/
1.    10.1109/SECURWARE.2010.45
32.    Zhang TY, Suen CY. A fast parallel algorithm for thinning digital patterns. Communications of the ACM. 1984; 27(3): 236-239. doi.org/10.1145/357994.358023
33.    Wang L, Leedham G. A thermal hand vein pattern verification system. In International Conference on Pattern Recognition and Image Analysis, Springer, Berlin, Heidelberg. 2005; 58-65.
34.    Aeri S, Kaur S. Vein Patterns as Bio-Metric Identifier using Euclidean Distance. International Journal of Computer Applications. 2014; 975: 8887.
35.    Kong AWK, Zhang D, Lu G. A study of identical twins’ palmprints for personal verification. Pattern Recognition. 2006; 39(11): 2149-2156. doi.org/10.1016/j.patcog.2006.04.035
36.    Somvanshi P, Rane M. Survey of palmprint recognition. International Journal of Scientific and Engineering Research. 2012; 3(2): 399-405.
37.    Prasanalakshmi B, Kannammal A. A secure cryptosystem from palm vein biometrics. In Proceedings of the 2nd International Conference on Interaction Sciences: Information Technology, Culture and Human. 2009; 1401-1405. doi.org/10.1145/1655925.1656183
38.    You Z, Zhou J, Wang Y, Sun Z, Shan S, Zheng W, Zhao Q. (Eds.). Biometric Recognition: 11th Chinese Conference, CCBR 2016, Chengdu, China. 2016. 9967.
39.    Sujatha R, Ephzibah EP, Dharinya SS. Smart Health Care Development: Challenges and Solutions. Role of Edge Analytics in Sustainable Smart City Development: Challenges and Solutions.   John Wiley and Sons, UK. 2020. 1-20. doi.org/10.1002/9781119681328.
40.    Butcher L. Using palm vein technology to accurately identify patients. Healthcare Financial Management. 2017; 71(4): 19-20.
41.    Qin H, El-Yacoubi MA, Li Y, Liu, C. Multi-scale and Multi-direction GAN for CNN-based Single Palm-vein Identification. IEEE Transactions on Information Forensics and Security. 2021; 16: 2652-2666. doi.org/10.1109/TIFS.2021.3059340
42.    Hughes RG. Reducing Functional Decline in Hospitalized Elderly--Patient Safety and Quality: An Evidence-Based Handbook for Nurses. 2008.
43.    Van Keer RL, Deschepper R, Francke AL, Huyghens L, Bilsen J. Conflicts between healthcare professionals and families of a multi-ethnic patient population during critical care: an ethnographic study. Critical Care. 2015;19(1): 1-13. doi.org/10.1186/s13054-015-1158-4
44.    Van Keer RL, Deschepper R, Huyghens L, Bilsen J. Mental well-being of patients from ethnic minority groups during critical care: a qualitative ethnographic study. BMJ Open. 2017; 7(9): 1-8. doi.org/10.1136/bmjopen-2016-014075
45.    Malhotra S, Dhawan H, Sharma R, Marwaha N. An incident of incorrect blood component transfusion: The need for constant hemovigilance. Asian Journal of Transfusion Science. 2015; 9(2): 216. doi.org/ 10.4103/0973-6247.162731
46.    Crosby ET, Duggan LV, Finestone PJ, Liu R, De Gorter R, Calder LA. Anesthesiology airway-related medicolegal cases from the Canadian Medical Protection Association. Canadian Journal of Anesthesia. 2021; 68(2): 183-195. doi.org/10.1007/s12630-021-01978-4
47.    Al-Azri MH. Delay in cancer diagnosis: causes and possible solutions. Oman Medical Journal. 2016;31(5):325. doi.org/10.5001/omj.2016.65
48.    Rodziewicz TL, Houseman B, Hipskind JE. Medical Error Reduction and Prevention. Stat Pearls Publishing. 2021. 29763131.
49.    Prasad S, Chai T. Palmprint for Individual’s Personality Behavior Analysis. The Computer Journal. 2020. doi.org/10.1093/comjnl/bxaa045
50.    Naessens JM, Huschka TR. Distinguishing hospital complications of care from pre-existing conditions. International Journal for Quality in Health Care. 2004; 16(1): i27-i35. doi.org/10.1093/intqhc/mzh012
51.    Jayaram G, Sporney H, Perticone P. The Utility and Effectiveness of 15-minute Checks in Inpatient Settings. Psychiatry. 2010;7(8):46-49.
52.    Engström AK. Hospitals in a changing Europe: Edited by M McKee, J Healy. Open University Press, Buckingham, 2003. doi.org/10.1136/jech.57.7.542-a
53.    McKee M, Healy J. The role of the hospital in a changing environment. Bulletin of the World Health Organization. 2000;78: 803-810.
54.    Best A, Greenhalgh T, Lewis S, Saul JE, Carroll S, Bitz J. Large‐system transformation in health care: a realist review. The Milbank Quarterly. 2012; 90(3): 421-456. doi.org/10.1111/j.1468-0009.2012.00670.x
55.    Ong LM, De Haes JC, Hoos AM, Lammes FB. Doctor-patient communication: a review of the literature. Social Science and Medicine. 1995; 40(7): 903-918. doi.org/10.1016/0277-9536(94)00155-M
56.    Fritzsche K, Diaz-Monsalve S, Abbo C, Goli F, Dobos CM. The doctor–patient relationship. In Psychosomatic Medicine, Springer, Cham. 2020; 33-43. doi.org/10.1007/978-3-030-27080-3_4
57.    Lee JC. A novel biometric system based on palm vein image. Pattern Recognition Letters. 2012; 33(12): 1520-1528. doi.org/10.1016/j.patrec.2012.04.007
58.    Wu X, Zhang D, Wang K. Palm line extraction and matching for personal authentication. IEEE Transactions on Systems, Man, and Cybernetics-Part A: Systems and Humans. 2006; 36(5): 978-987. doi.org/10.1109/TSMCA.2006.871797
59.    Han WY, Lee JC. Palm vein recognition using adaptive Gabor filter. Expert Systems with Applications. 2012; 39(18): 13225-13234. doi.org/10.1016/j.eswa.2012.05.079
60.    Van HT, Duong CM, Van Vu G, Le TH. Palm Vein Recognition Using Enhanced Symmetry Local Binary Pattern and SIFT Features. In2019 19th International Symposium on Communications and Information Technologies (ISCIT) 2019; 311-316. doi.org/10.1109/ISCIT.2019.8905179
61.    Pititheeraphab Y, Thongpance N, Aoyama H, Pintavirooj C. Vein pattern verification and identification based on local geometric invariants constructed from minutia points and augmented with barcoded local feature. Applied Sciences. 2020; 10(9): 3192. doi.org/10.3390/app10093192
62.    Sakthivel G. Hand vein detection using infrared light for web-based account. International Journal of Computer Applications. 2015: 112(10).
63.    Gupta P, Gupta P Extraction of true palm-dorsa veins for human authentication. In Proceedings of the 2014 Indian Conference on Computer Vision Graphics and Image Processing. 2014; 1-8. doi.org/10.1145/2683483.2683518
64.    Mahnken S. Today's authentication options: the need for adaptive multifactor authentication. Biometric Technology Today. 2014; 7: 8-10. doi.org/10.1016/S0969-4765(14)70126-2
65.    Yokozawa H, Shinzaki T, Yonenaga A, Wada A. Biometric authentication technologies of client terminals in pursuit of security and convenience. Fujitsu Sci Tech J. 2016; 52(3): 23-27.
66.    Jain AK, Ross A, Pankanti S. Biometrics: a tool for information security. IEEE Transactions on Information Forensics and Security. 2016; 1(2): 125-143. doi.org/10.2139/ssrn.2226594
67.    Gelb A, Clark J. Identification for development: the biometrics revolution. Center for Global Development Working Paper. 2013(315).
68.    Dapp TF, Slomka L, AG DB, Hoffmann R. Fintech–Die digitale (R) evolution im Finanzsektor. Algorithmenbasiertes Banking mit human touch. Frankfurt am Main: Deutsche Bank Research. 2014 Sep 23.
69.    Anitha, A, S V Revathi, S Jeevanantham, and E Eliza Godwin. Intrusion Detection System Based on Artificial Intelligence. International Journal of Technology. 2017; 7(1): 20–24.
70.    Hassan, Syed Imtiyaz. Design of Portable and Sustainable User Authentication System Using Intrinsic Mobile Phone Biometric in Smart City Environment. Research Journal of Engineering and Technology. 2017; 8(2): 128.
71.    Kaur, Jaspreet, and Rajdeep Singh Sohal . Multi Sensor Based Biometric System Using Image Processing. Research Journal of Engineering and Technology. 2017; 8(1): 53–62.
72.    Kumar, Kotta Kranthi. Importance and Applications of Artificial Intelligence (Metastorm Software) in Pharmaceutical Process Life-Cycle. Research Journal of Pharmaceutical Dosage Forms and Technology. 2019; 11(2): 116–20.
73.    Kumar, Neela Ashish et al. Smart Attendance Marking System Using Facial Recognition. Research Journal of Science and Technology. 2019; 11(2): 101–8.
74.    Mohapatra, Badri Narayan, Joel Dsouza, Yash Sangoiy, and Nisarg Shah. Smart Attendance System Using Real Time Face Recognition. International Journal of Technology. 2018; 8(1): 1–5.
75.    Rashmi, R. A Study on the Implementation and the Impact of Artificial Intelligence in Banking Processes. Asian Journal of Management. 2021; 12(1): 47–54.
76.    Singh, Indranil. A Review on In-Vivo Imaging of Cancer Cells by Bioconjugated Quantum Dots. Asian Journal of Pharmaceutical Research. 2018; 8(4): 243–48.
77.    Vinothkumar, C, and Paul Joseph B Parakkal. Multimodal Biometric Authentication Process for High Secured Border Control. Research Journal of Pharmacy and Technology. 2015; 8(9): 1264.
78.    Vandali, Vijayaraddi. Computer in Nursing, International Journal of Advances in Nursing Management. 2017; 5(1): 89 https://doi.org/10.5958/2454-2652.2017.00020.8

Recomonded Articles:

Research Journal of Pharmacy and Technology (RJPT) is an international, peer-reviewed, multidisciplinary journal.... Read more >>>

RNI: CHHENG00387/33/1/2008-TC                     
DOI: 10.5958/0974-360X 

1.3
2021CiteScore
 
56th percentile
Powered by  Scopus


SCImago Journal & Country Rank

Journal Policies & Information


Recent Articles




Tags


Not Available