Quantum Computing and Healthcare: Drug Discovery and Molecular Simulation with Machine Learning
Keywords:
Quantum Computing, Machine Learning, Healthcare, Integration Frameworks, Ethical ConsiderationsAbstract
This work explores the relationship between machine learning, quantum computing, and healthcare with a particular emphasis on the development of drugs and molecular simulation. Using a descriptive design, a deductive approach, and an interpretivist philosophy, the study collects secondary data to synthesize existing literature. The analysis includes integration frameworks, machine learning algorithm designs, ethical and regulatory considerations, and simulations of quantum computing. The results shed light on the intricacies of machine learning models and quantum simulations, highlighting the necessity of strong integration frameworks to overcome compatibility issues. The regulatory and ethical landscapes need to change to accommodate quantum-enhanced healthcare technologies. The study highlights the potential for change and emphasizes that responsible implementation requires addressing technical nuances and ethical concerns.
Downloads
References
AVRAMOULI, M., SAVVAS, I.K., VASILAKI, A. and GARANI, G., 2023. Unlocking the Potential of Quantum Machine Learning to Advance Drug Discovery. Electronics, 12(11), pp. 2402.
BEDNARSKI, B.J., LEPAK, Ł.E., ŁYSKAWA, J.,J., PIEŃCZUK, P., ROSOŁ, M. and ROMANIUK, R.S., 2022. Influence of IQT on research in ICT. International Journal of Electronics and Telecommunications, 68(2), pp. 259-266.
CHARRUA-SANTOS, F., 2021. Quantum Biotech and Internet of Virus Things: Towards a Theoretical Framework. Applied System Innovation, 4(2), pp. 27.
DASH, S., SHAKYAWAR, S.K., SHARMA, M. and KAUSHIK, S., 2019. Big data in healthcare: management, analysis and future prospects. Journal of Big Data, 6(1), pp. 1-25.
EJALONIBU, M.A., OGUNDARE, S.A., ELRASHEDY, A.A., EJALONIBU, M.A., LAWAL, M.M., MHLONGO, N.N. and KUMALO, H.M., 2021. Drug Discovery for Mycobacterium tuberculosis Using Structure-Based Computer-Aided Drug Design Approach. International Journal of Molecular Sciences, 22(24), pp. 13259.
FLÖTHER, F.,F., 2023. The state of quantum computing applications in health and medicine. Research Directions: Quantum Technologies, 1.
IMAM, N., 2019. Nanosystems, Edge Computing, and the Next Generation Computing Systems. Sensors, 19(18), pp. 4048.
KONKOLY-THEGE, K. and JACKSON, M., 2022. The Legal Implications of Quantum Computing. Scitech Lawyer, 18(3), pp. 4-10.
MICHAL, K., 2021. Quantum technology for military applications. EPJ Quantum Technology, 8(1),.
MOHAMAD, T.D. and MORTEZA, S.G., 2023. Research Trends in Quantum Computers by Focusing on Qubits as Their Building Blocks. Quantum Reports, 5(3), pp. 597.
Shrivastava, A., Chakkaravarthy, M., Shah, M.A..A Novel Approach Using Learning Algorithm for Parkinson’s Disease Detection with Handwritten Sketches. In Cybernetics and Systems, 2022
Shrivastava, A., Chakkaravarthy, M., Shah, M.A., A new machine learning method for predicting systolic and diastolic blood pressure using clinical characteristics. In Healthcare Analytics, 2023, 4, 100219
Shrivastava, A., Chakkaravarthy, M., Shah, M.A.,Health Monitoring based Cognitive IoT using Fast Machine Learning Technique. In International Journal of Intelligent Systems and Applications in Engineering, 2023, 11(6s), pp. 720–729
Shrivastava, A., Rajput, N., Rajesh, P., Swarnalatha, S.R., IoT-Based Label Distribution Learning Mechanism for Autism Spectrum Disorder for Healthcare Application. In Practical Artificial Intelligence for Internet of Medical Things: Emerging Trends, Issues, and Challenges, 2023, pp. 305–321
Boina, R., Ganage, D., Chincholkar, Y.D., .Chinthamu, N., Shrivastava, A., Enhancing Intelligence Diagnostic Accuracy Based on Machine Learning Disease Classification. In International Journal of Intelligent Systems and Applications in Engineering, 2023, 11(6s), pp. 765–774
Shrivastava, A., Pundir, S., Sharma, A., ...Kumar, R., Khan, A.K. Control of A Virtual System with Hand Gestures. In Proceedings - 2023 3rd International Conference on Pervasive Computing and Social Networking, ICPCSN 2023, 2023, pp. 1716–1721
SENGUPTA, K. and SRIVASTAVA, P.R., 2021. Quantum algorithm for quicker clinical prognostic analysis: an application and experimental study using CT scan images of COVID-19 patients. BMC Medical Informatics and Decision Making, 21, pp. 1-14.
VIKRAM, S. and ANSARI, M.H., 2023. Supercomputer: In Indian Perspective. International Research Journal of Innovations in Engineering and Technology, 7(2), pp. 107-115.
WEINREICH, J., GUIDO FALK, V.R. and O ANATOLE, V.L., 2023. Encrypted machine learning of molecular quantum properties. Machine Learning : Science and Technology, 4(2), pp. 025017.
ZHANG, Y., LUO, M., WU, P., WU, S., TZONG-YI, L. and CHEN, B., 2022. Application of Computational Biology and Artificial Intelligence in Drug Design. International Journal of Molecular Sciences, 23(21), pp. 13568.
Andrikopoulos, P., Aron-Wisnewsky, J., Chakaroun, R., Myridakis, A., Forslund, S.K., Nielsen, T., Adriouch, S., Holmes, B., Chilloux, J., Vieira-Silva, S., Falony, G., Salem, J., Andreelli, F., Belda, E., Kieswich, J., Chechi, K., Puig-Castellvi, F., Chevalier, M., Le Chatelier, E., Olanipekun, M.T., Hoyles, L., Alves, R., Helft, G., Isnard, R., Køber, L., Coelho, L.P., Rouault, C., Gauguier, D., Gøtze, J.P., Prifti, E., Froguel, P., Alili, R., Galijatovic, E.A.A., Barthelemy, O., Bastard, J., Batisse, J., Bel-Lassen, P., Berland, M., Bittar, R., Blottière, H., Bosquet, F., Boubrit, R., Bourron, O., Camus, M., Ciangura, C., Collet, J., Dietrich, A., Djebbar, M., Doré, A., Engelbrechtsen, L., Fezeu, L., Fromentin, S., Pons, N., Graine, M., Grünemann, C., Hartemann, A., Hartmann, B., Hornbak, M., Jaqueminet, S., Jørgensen, N.R., Julienne, H., Justesen, J., Kammer, J., Karup, N., Kozlowski, R., Kuhn, M., Lejard, V., Letunic, I., Levenez, F., Marko, L., Martinez-Gili, L., Massey, R., Maziers, N., Moitinho-Silva, L., Montalescot, G., Neves, A.L., Le Pavin, L.P., Pousset, F., Rodriguez-Martinez, A., Schmidt, S., Schütz, T., Silva, L., Silvain, J., Svendstrup, M., Swartz, T.D., Vanduyvenboden, T., Verger, E.O., Walther, S., Zucker, J., Bäckhed, F., Vestergaard, H., Hansen, T., Oppert, J., Blüher, M., Nielsen, J., Raes, J., Bork, P., Yaqoob, M.M., Stumvoll, M., Pedersen, O., Ehrlich, S.D., Clément, K. And Dumas, M., 2023. Evidence Of A Causal And Modifiable Relationship Between Kidney Function And Circulating Trimethylamine N-Oxide. Nature Communications, 14(1), Pp. 5843.
Chatterjee, S., Paras, Hu, H. and CHAKRABORTY, M., 2023. A Review of Nano and Microscale Heat Transfer: An Experimental and Molecular Dynamics Perspective. Processes, 11(9), pp. 2769.
GAUDÊNCIO, S.,P., BAYRAM, E., BILELA, L.L., CUETO, M., DÍAZ-MARRERO, A.,R., HAZNEDAROGLU, B.Z., JIMENEZ, C., MANDALAKIS, M., PEREIRA, F., REYES, F. and TASDEMIR, D., 2023. Advanced Methods for Natural Products Discovery: Bioactivity Screening, Dereplication, Metabolomics Profiling, Genomic Sequencing, Databases and Informatic Tools, and Structure Elucidation. Marine Drugs, 21(5), pp. 308.
HABCHI, Y., HIMEUR, Y., KHEDDAR, H., BOUKABOU, A., ATALLA, S., CHOUCHANE, A., OUAMANE, A. and MANSOOR, W., 2023. AI in Thyroid Cancer Diagnosis: Techniques, Trends, and Future Directions. Systems, 11(10), pp. 519.
HERRERA RODRÍGUEZ, L.,E., ULLAH, A., RUEDA ESPINOSA, K.,J., DRAL, P.O. and KANANENKA, A.A., 2022. A comparative study of different machine learning methods for dissipative quantum dynamics. Machine Learning : Science and Technology, 3(4), pp. 045016.
HSIEH-FU, T., PODDER, S. and PIN-YUAN, C., 2023. Microsystem Advances through Integration with Artificial Intelligence. Micromachines, 14(4), pp. 826.
JAFRASTEH, F., FARMANI, A. and MOHAMADI, J., 2023. Meticulous research for design of plasmonics sensors for cancer detection and food contaminants analysis via machine learning and artificial intelligence. Scientific Reports (Nature Publisher Group), 13(1), pp. 15349.
KONSTANTOPOULOS, G., KOUMOULOS, E.P. and CHARITIDIS, C.A., 2022. Digital Innovation Enabled Nanomaterial Manufacturing; Machine Learning Strategies and Green Perspectives. Nanomaterials, 12(15), pp. 2646.
LING, L., AHMED, F.A., ZHI, X.C., WAN, Y.H., YEAP, S.K., REN, J.C., EUGENE ZHEN, X.S., JEN, F.K., YONG, Y.L., LING, J.L., NAING, S.Y. and ALAN HAN, K.O., 2022. Addressing the Clinical Feasibility of Adopting Circulating miRNA for Breast Cancer Detection, Monitoring and Management with Artificial Intelligence and Machine Learning Platforms. International Journal of Molecular Sciences, 23(23), pp. 15382.
MASSARO, A., 2023. Intelligent Materials and Nanomaterials Improving Physical Properties and Control Oriented on Electronic Implementations. Electronics, 12(18), pp. 3772.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
All papers should be submitted electronically. All submitted manuscripts must be original work that is not under submission at another journal or under consideration for publication in another form, such as a monograph or chapter of a book. Authors of submitted papers are obligated not to submit their paper for publication elsewhere until an editorial decision is rendered on their submission. Further, authors of accepted papers are prohibited from publishing the results in other publications that appear before the paper is published in the Journal unless they receive approval for doing so from the Editor-In-Chief.
IJISAE open access articles are licensed under a Creative Commons Attribution-ShareAlike 4.0 International License. This license lets the audience to give appropriate credit, provide a link to the license, and indicate if changes were made and if they remix, transform, or build upon the material, they must distribute contributions under the same license as the original.