Uddin, Borhan
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Resilient Intelligence: AI and MIS in the Cyber-Economic Era Ahsan, Rezwan Moin; Uddin, Borhan; Hossen, Tawhid; Das, Sachin
The Eastasouth Journal of Information System and Computer Science Vol. 3 No. 02 (2025): The Eastasouth Journal of Information System and Computer Science (ESISCS)
Publisher : Eastasouth Institute

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.58812/esiscs.v3i02.758

Abstract

The integration of artificial intelligence (AI) with management information systems (MIS) has transformed how countries protect their digital infrastructure, oversee organizational projects, and maintain economic resilience. This study consolidates recent developments in cybersecurity, project governance, software quality assurance (QA), energy analytics, and economic intelligence to propose an integrated model, AI-for-MIS Cyber-Energy-Economic Resilience (AM-CEER), that improves proactive defense, predictive governance, and sustainable performance. This research synthesizes over seventy recent peer-reviewed works, incorporating deep learning models (LSTM, Transformer), federated analytics, explainable AI (XAI), and cloud-based MIS infrastructures into a cohesive framework. Research demonstrates that AI-enhanced MIS infrastructures enhance cyber threat detection accuracy by more than 30%, diminish IT project risk exposure by 25%, and elevate predictive capability for energy and economic systems by around 40%. The proposed AM-CEER architecture creates a framework for digital governance that integrates data-driven decision-making with cybersecurity, quality assurance automation, and macroeconomic forecasting, thereby ensuring the long-term stability of essential national services.
Explainable AI Framework for Precision Public Health in Metabolic Disorders: A Federated, Multi-Modal Predictive Modelling Approach for Early Detection and Intervention of Type 2 Diabetes Rahman, Md Habibur; Khan, Md Nazibullah; Das, Sachin; Uddin, Borhan
The Eastasouth Journal of Information System and Computer Science Vol. 3 No. 02 (2025): The Eastasouth Journal of Information System and Computer Science (ESISCS)
Publisher : Eastasouth Institute

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.58812/esiscs.v3i02.759

Abstract

One of the biggest public health problems of the twenty-first century is metabolic disorders, especially Type 2 diabetes (T2D). Morbidity, mortality, and medical expenses can be significantly decreased by early detection of at-risk people. However, nonlinear, multi-factorial, and high-dimensional interactions that influence the development of disease are not well captured by traditional risk-scoring methods. In order to predict and interpret the risk of type 2 diabetes and related metabolic disorders, this study creates an Explainable AI (XAI) framework for precision public health that combines multi-modal data, such as genomic profiles, lifestyle factors, socioeconomic determinants, and electronic health records (EHR). We create a federated, hybrid model that combines Random Forest classifiers, Deep Neural Networks (DNN), and Gradient Boosting Machines (LightGBM/XGBoost), building on federated and ensemble learning paradigms. Shapley Additive Explanations (SHAP) and counterfactual analysis are used to uncover personalized, actionable risk profiles in order to attain explainability. Harmonized multi-institutional datasets with over 200,000 records gathered from several U.S. health systems are used to train the model. The results show a calibrated Brier score of 0.12, sensitivity of 89%, specificity of 87%, and AUC of 0.93 ± 0.01. The socioeconomic deprivation index, polygenic risk score, BMI slope, and HbA1c trajectory are the main factors, according to SHAP study. Federated deployment protects data privacy while preserving performance. These results show that federated, explainable AI pipelines can facilitate population-based, privacy-preserving, andThe goal of precision public health is being advanced by large-scale early-warning systems for managing metabolic diseases.
Cognitive Cyber Defense: AI–MIS Integration through Big Data and Cloud Frameworks for Next-Generation Digital Resilience Hossain, Md Delwar; Sikder, Mohammad Somon; Uddin, Md Salah; Ahsan, Rezwan Moin; Uddin, Borhan; Hossen, Tawhid
The Eastasouth Journal of Information System and Computer Science Vol. 1 No. 02 (2023): The Eastasouth Journal of Information System and Computer Science (ESISCS)
Publisher : Eastasouth Institute

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.58812/esiscs.v1i02.764

Abstract

The rapid rise in cyber threats across linked global digital ecosystems calls for a unified, intelligence-based defense strategy that brings together cybersecurity, management information systems (MIS), big-data analytics, and flexible IT governance. This study builds on the work of Kaur et al. (2023), Hasan et al. (2023), Mahmud et al. (2023), and Das et al. (2023) to create a comprehensive framework that uses artificial intelligence (AI), cloud computing, and data-driven decision-making to make digital systems more resilient. The research formulates an integrated AI–MIS Cyber-Defense Framework via a meta-synthesis of present empirical studies, clarifying the interaction among machine-learning analytics, predictive threat intelligence, and adaptive governance feedback loops. These interdependencies together improve the accuracy of detection, the ability to understand the issue in context, and the ability of organizations to adjust in unstable cyber environments. Quantitative evaluation shows that the system works better than traditional control systems. The average detection area under the curve (AUC) is over 0.93, the precision–recall metrics are above 0.90, and the composite resilience index is 27 percent higher. These results show that AI-enhanced MIS systems greatly improve cybersecurity readiness at both the national and business levels by allowing for proactive risk management, automated response coordination, and governance based on resilience. The proposed paradigm enhances the theoretical framework of cyber-resilience informatics and offers practical guidance for chief information officers (CIOs), cybersecurity strategists, and digital transformation leaders aiming to integrate scalable, self-optimizing, and AI-governed security measures into intricate digital infrastructures.
AI-Powered Data Analytics and Multi-Omics Integration for Next-Generation Precision Oncology and Anticancer Drug Development Sikder, Tawfiqur Rahman; Dash, Sourav; Uddin, Borhan; Hossain, Forhad
The Eastasouth Journal of Information System and Computer Science Vol. 1 No. 02 (2023): The Eastasouth Journal of Information System and Computer Science (ESISCS)
Publisher : Eastasouth Institute

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.58812/esiscs.v1i02.838

Abstract

The recent rapid evolution of artificial intelligence (AI), big data analytics, and multi-omics technologies is changing modern precision oncology. These tools have opened up new opportunities to understand the heterogeneity of the tumor, drug response, and biomarker discovery. Traditional cancer therapies often fail because we do not fully understand the genomic, transcriptomic, proteomic, and metabolomic differences that are present between patients and within tumor microenvironments. Recent progress in computational intelligence, integrative omics pipelines, and drug discovery through machine learning holds significant potential to enable the personalization of cancer treatment, identify new anticancer compounds, and accelerate the development of new therapeutics. This study provides a detailed analysis of how AI-enabled data analytics and the integration of multi-omics capabilities are transforming next-generation precision oncology and the development of anticancer drugs. It synthesizes the insights from the recent studies such as big data facilitated plant biotechnology for bioactive anticancer compounds (Ahmed et al., 2023), machine learning enabled genomic selection framework (Saimon et al., 2023), artificial intelligence based on ischemic stroke biomarker discovery (Manik, 2023), cervical cancer prediction (Manik, 2022), predictive multi-omics system of neurodegenerative disease (Manik, 2021), and chronic disease analytics (Manik et al., 2021) to describe the potential of innovative computational frameworks to overcome existing Generative AI, deep learning, hybrid ML, and systems biology stand out as pillars on precision drug discovery, immuno-oncology improvement, high throughput compound selection, and early diagnosis of various cancers. The paper then develops a conceptual AI-driven multi-omics architecture for real-world oncology applications. It demonstrates how the genomic layer, transcript sequencing layer, epigenomic layer, proteome, microbiomics, and metabolomics layers can be harmonized using machine learning, federated learning, Bayesian optimization, and network-based models. By addressing literature from both modern times and fundamentals, this work uncovers gaps in the current oncology pipelines, suggests new strategies in AI for real-world translation into clinical oncology, and thereby establishes the potential of bioinformatics-driven solutions in anticancer drug development. The results highlight the importance of interdisciplinary research and data science approaches in providing equitable, individualized, and high-precision cancer care.