Loading [MathJax]/extensions/MathZoom.js
Semantic Reasoning and Knowledge Discovery in Biomedical Informatics Using Domain-Specific Ontologies | IEEE Conference Publication | IEEE Xplore

Semantic Reasoning and Knowledge Discovery in Biomedical Informatics Using Domain-Specific Ontologies


Abstract:

The introduction of domain-specific ontologies is revolutionizing the rapidly developing area of Biomedical Informatics by improving semantic reasoning and knowledge disc...Show More

Abstract:

The introduction of domain-specific ontologies is revolutionizing the rapidly developing area of Biomedical Informatics by improving semantic reasoning and knowledge discovery. Using these ontologies, a complete framework for the extraction, organization, and analysis of complicated biological data is presented in this research. The framework provides deeper insights into biomedical research and healthcare practices by interpreting and connecting enormous arrays of heterogeneous data via the use of web technologies and sophisticated data mining methods. Accurate interpretation of biological concepts and their connections is made possible by semantic reasoning, which is supported by the structured representation of domain-specific ontologies. This leads to improved query performance, more precise data retrieval, and the development of complex inferential processes. The study also looks at how ontology-based data mining may be used to find new links and patterns, which might help with predictive modelling and the creation of hypotheses in biomedical research. The implementation obstacles are also discussed, such as scalability issues, data quality assurance, and ontology alignment and integration. The approach's major contributions to drug development, personalized medicine, and the larger field of biomedical research are highlighted in the paper's conclusion, which will eventually lead to better healthcare results and well-informed decisions.
Date of Conference: 22-23 March 2024
Date Added to IEEE Xplore: 05 September 2024
ISBN Information:
Conference Location: Pune, India
References is not available for this document.

I. Introduction

Using data to drive discoveries and enhance patient outcomes, the field of biomedical informatics has become essential to contemporary healthcare and biomedical research [1]. As technology progresses, this sector also does, and the creation of domain-specific ontologies and advanced data mining methods has been a major driving force. These developments have sparked a paradigm shift in favour of more complex and efficient data processing techniques, which has produced ground-breaking discoveries and breakthroughs in the medical field [2]. In biomedical informatics, domain-specific ontologies are organised frameworks that specify the vocabulary and connections pertinent to certain biological domains. They act as thorough vocabularies that standardise ideas and how they relate to one another, promoting mutual understanding amongst various healthcare and research organisations [3]. To handle the complexity and heterogeneity present in biological data, these ontologies are essential [4]. This allows for more precise and effective semantic reasoning and knowledge discovery. These ontologies are used by semantic reasoning to analyse and deduce meaning from large and diverse biological data sets [5]. To improve decision-making processes, it entails using logical approaches to extract, analyse, and infer links and patterns within data. Semantic reasoning speeds up the rate of discovery in biomedical research by enabling more complex searches, better information retrieval, and the creation of novel hypotheses by giving data a contextual framework [6]. At the same time, substantial advancements have been made in data mining methods, providing a variety of tools and algorithms for obtaining useful information from massive and intricate data sets. Data mining in the context of biomedical informatics includes techniques for, among other things, pattern identification, anomaly detection, clustering, and predictive modelling [7]- [9]. By revealing hidden patterns, clarifying putative causal linkages, and forecasting future trends or consequences, these methods greatly assist in biological research and clinical decision-making. Although the integration of domain-specific ontologies with data mining and semantic reasoning has great potential, there are still several obstacles to overcome [10]. These include problems with ontology upkeep and scalability, integrating and aligning diverse data sources, and guaranteeing the accuracy and dependability of the information that is extracted. Furthermore, the quick speed at which biomedical research is developing means that ontologies must constantly be updated and improved to consider new discoveries and insights [11]. A prime example of the influence of these technologies is the emerging area of personalised medicine. Personalised medicine seeks to optimise patient outcomes by customising healthcare therapies to individual patient features via the integration of patient-specific data with larger scientific knowledge [12]. Semantic reasoning, data mining, and domain-specific ontologies are important facilitators in this field, offering the frameworks and instruments required to comprehend and analyse multidimensional, complicated data and arrive at well-informed conclusions [13]. Following these advancements, the goal of this study is to provide a thorough review of the status of semantic reasoning and knowledge discovery in biomedical informatics, with an emphasis on the function of domain-specific ontologies, as well as their potential going forward. It will explore the methods and uses of these technologies, talk about the difficulties and constraints that have been found, and make predictions about potential advancements and future directions in the area. In doing so, the article hopes to further the current discussion and advancement of more successful, efficient, and customised medical research as well as healthcare solutions. All things considered, the combination of data mining, semantic reasoning, and domain-specific ontologies is a major development in biomedical informatics. These innovations provide strong instruments for deciphering and making use of the enormous volumes of data produced in research and healthcare environments, resulting in improved results and more informed choices. It is essential to address current issues and look for new possibilities as the area develops to increase the effectiveness and impact of these strategies. By attempting to clarify these points, this study hopes to provide the groundwork for further investigation and advancement in this important and ever-changing field.

Select All
1.
J. Pathak, T. M. Johnson and C. G. Chute, "Survey of modular ontology techniques and their applications in the biomedical domain", Integrated computer-aided engineering, vol. 16, no. 3, pp. 225-242, 2009.
2.
S. Khan, S. H. Dar, Z. Iqbal, B. Zafar, N. Ali and T. Khalil, "An Approach for Evaluating & Ranking Ontologies with Applications in Biomedical Domain", Technical Journal, vol. 25, no. 02, pp. 95-109, 2020.
3.
M. Amith, Z. He, J. Bian, J. A. Lossio-Ventura and C. Tao, "Assessing the practice of biomedical ontology evaluation: Gaps and opportunities", Journal of biomedical informatics, vol. 80, pp. 1-13, 2018.
4.
K. Liu, W. R. Hogan and R. S. Crowley, "Natural language processing methods and systems for biomedical ontology learning", Journal of biomedical informatics, vol. 44, no. 1, pp. 163-179, 2011.
5.
V. Malik, R. Mittal and S. V. SIngh, "EPR-ML: ECommerce Product Recommendation Using NLP and Machine Learning Algorithm", 2022 5th International Conference on Contemporary Computing and Informatics (IC3I), pp. 1778-1783, 2022, December.
6.
R. Mittal, J. Singh, V. Malik, A. Mittal, V. Rattan and S. V. Singh, "Forecasting E-Mentoring Effectiveness using Data Mining Approach", 2022 5th International Conference on Contemporary Computing and Informatics (IC3I), pp. 931-934, 2022, December.
7.
V. Y. Bharadwaj, S. Muddasani, M. Rudra, P. Mudavath, M. S. Mashkour, B. Rajalakshmi, et al., "Disaster zone human and animal detection using sonar", E3S Web of Conferences, vol. 507, pp. 01010, 2024.
8.
V. Revathi, A. Rajitha, D. Meghe, D. K. Yadav, S. Sharma, R. S. Zabibah, et al., "Developments in Biomedical Materials: From Conventional Implantation to State-of-the-Art Pharmaceutical Uses", E3S Web of Conferences, vol. 507, pp. 01056, 2024.
9.
M. Gupta, R. Gundlapalle, E. Annapoorna, M. Al-Farouni, L. K. Tyagi and B. Pratap, "Flexural behavior of composite material under three point bending load", E3S Web of Conferences, vol. 507, pp. 01061, 2024.
10.
S. Anjimoon, V. Asha, J. Gurnani, I. Khan, S. Paul and H. M. Al-Jawahry, "Innovations and Opportunities in Sustainable Textile Recycling", E3S Web of Conferences, vol. 507, pp. 01065, 2024.
11.
L. Jasim, U. R. NV, P. Deepthi, N. Ginni, K. Dhamija and A. Meheta, "Advancing Surface Hardness and Wear Resistance: Microwave-Assisted Cladding of Ni-TiC Mixture onto SS-304", E3S Web of Conferences, vol. 507, pp. 01017, 2024.
12.
V. H. Raj, S. V. Kumar, M. Sabir, D. K. Yadav, S. Sharma, H. Alabdeli, et al., "Optimizing Food Security and Environmental Sustainability via Agroecology and Sustainable Intensification Strategies", E3S Web of Conferences, vol. 507, pp. 01059, 2024.
13.
S. P. Dwivedi, S. Pahwa, A. Dutt, K. Saritha, B. Rajalakshmi and R. Ahmed, "Revolutionizing Surface Enhancement: Microwave-Assisted Cladding of Ni-Boron Nitride Mixture onto SS-304", E3S Web of Conferences, vol. 507, pp. 01008, 2024.
14.
R. R. Kumar, K. V. Krishna, S. Chandra, K. Sathish, M. S. Mashkour, K. Aravinda, et al., "Enhancing Residential Security: Implementation of an IoT-based Anti-Theft Flooring System", E3S Web of Conferences, vol. 507, pp. 01019, 2024.
15.
P. Ediga, P. Gullapelly, T. Edukulla, K. Nunna, M. Al-Farouni, V. Revathi, et al., "Promoting sustainable living: IoT-integrated smart homes for elderly people", E3S Web of Conferences, vol. 507, pp. 01033, 2024.
16.
Y. J. N. Kuma, R. Chandan, S. H. Somanini, S. Vadtya, Y. R. L. Pranay, K. A. Mohammed, et al., "Predictive Modeling for Enhanced Plant Cultivation in Greenhouse Environment", E3S Web of Conferences, vol. 507, pp. 01066, 2024.
17.
A. Numan, A. A. Gill, S. Rafique, M. Guduri, Y. Zhan, B. Maddiboyina, et al., "Rationally engineered nanosensors: A novel strategy for the detection of heavy metal ions in the environment", Journal of Hazardous Materials, vol. 409, pp. 124493, 2021.
18.
G. Kalyani, B. Janakiramaiah, A. Karuna and L.V.N. Prasad, "Diabetic retinopathy detection and classification using capsule networks", Complex and Intelligent Systems, 2023.
19.
K. Mukilan, K. Thaiyalnayaki, Y. D. Dwivedi, J. Samson Isaac, A. Poonia, A. Sharma, et al., "Prediction of rooftop photovoltaic solar potential using machine learning", International Journal of Photoenergy, vol. 2022, pp. 1-8, 2022.
20.
Y. D. Dwivedi, A. Wahab, A. D. Pallay and A. Shesham, "Effect of surface roughness on aerodynamic performance of the wing with NACA 4412 airfoil at Reynolds number 1.7× 105", Materials Today: Proceedings, vol. 56, pp. 468-476, 2022.
21.
J. M. Iqbal and A. Karthik, "Speech Enhancement Techniques in the Digital Analog and Hybrid Domains", 2022 International Conference on Computer Communication and Informatics (ICCCI), pp. 1-3, 2022, January.
22.
R. O. Reddy, S. Kautish, V. P. Reddy, N. S. Yadav, M. M. Alanazi and A. W. Mohamed, "Effects of integrated fuzzy logic pid controller on satellite antenna tracking system", Computational Intelligence and Neuroscience, vol. 2022, 2022.
23.
S. S. Nerella, S. V. V. S. Nakka and B. Panitapu, "Mathematical modeling of closed loop pulsating heat pipe by using artificial neural networks", Journal homepage, vol. 39, no. 3, pp. 955-962, 2021, [online] Available: http://iieta.org/journals/ijht.
24.
G. N. S. Bandi, T. S. Rao and S. S. Ali, "Data analytics applications for human resource management", 2021 International Conference on Computer Communication and Informatics (ICCCI), pp. 1-5, 2021, January.
25.
H. T. Das, K. Hariprasad and T. E. Balaji, "Graphene and Its Analogous 2D-Layered Materials for Flexible Persistent Energy Storage Devices in Consumer Electronics", 2D Functional Nanomaterials: Synthesis Characterization and Applications., pp. 297-315, 2021.
26.
K. V. Allamraju, E. Poojitha and G. Rasagnya, "Contact stress analysis of metallic and additive manufacturing material in transmission", Materials Today: Proceedings, vol. 44, pp. 573-578, 2021.
27.
M. N. Bhukya, V. R. Kota, S. R. Depuru, M. P. P. Reddy and G. H. Reddy, "An Effective Design and Implementation of Hybrid MPP Tracking Scheme Based on Linear Tangents & Neville Interpolation (LT-NI) Technique for Photovoltaic (PV) System", IEEE Access, vol. 9, pp. 68266-68276, 2021.
28.
B. S. Goud, P. Bindu, P. Srilatha and Y. H. Krishna, "The Joule heating effect on MHD natural convective fluid flow in a permeable medium over a semi-infinite inclined vertical plate in the presence of the chemical reaction", IOP Conference Series: Materials Science and Engineering, vol. 993, no. 1, pp. 012111, 2020, December.
29.
R. S. Babu, Y. N. Murthy, I. L. P. Raj, M. S. Revathy, N. Chidhambaram, V. Ganesh, et al., "Improved optoelectronic properties of Yttrium co-doped CdO: Zn thin films fabricated by nebulizer spray pyrolysis method for TCO applications", Physica Scripta, vol. 96, no. 12, pp. 125860, 2021.
30.
L. Kansal, L. H. Alzubaidi, A. B. Gurulakshmi, G. Karuna, S. Pahwa and K. K. Das, "Effect of Ambient temperature on the plastic products using the finite element method", E3S Web of Conferences, vol. 507, pp. 01064, 2024.
Contact IEEE to Subscribe

References

References is not available for this document.