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Author(s): 

Azari Fatemeh | Abdollahi Ali

Issue Info: 
  • Year: 

    2025
  • Volume: 

    4
  • Issue: 

    1
  • Pages: 

    145-170
Measures: 
  • Citations: 

    0
  • Views: 

    186
  • Downloads: 

    0
Abstract: 

To effectively leverage artificial intelligence (AI), organizations need a comprehensive understanding of their AI maturity level. Assessing AI maturity can serve as the first step in developing a digital transformation roadmap and AI strategies. This study aims to present a comprehensive framework for evaluating organizational AI maturity. The research methodology employed is a systematic literature review. Through this process, after screening and assessing the quality of scientific articles and consulting reports, 31 selected documents were analyzed. The findings indicate that key dimensions of AI maturity include strategy and leadership, organization and culture, data, technology and infrastructure, operations, decision-making, ethics and regulations, security, and privacy. Additionally, it was found that existing maturity models primarily focus on technical and managerial aspects, with less attention given to social, legal, and ethical dimensions. By conducting a comparative analysis of various AI maturity models, this study proposes a comprehensive framework for assessing organizational readiness in adopting and developing AI, which can serve as a guideline for policymakers and organizational managers.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

SHARIFI SADEH M.

Issue Info: 
  • Year: 

    2009
  • Volume: 

    1
  • Issue: 

    3
  • Pages: 

    83-93
Measures: 
  • Citations: 

    0
  • Views: 

    1580
  • Downloads: 

    0
Keywords: 
Abstract: 

In the response phase the most important step is to assess disaster after occurrence. By disaster assessment, we can obtain all the needed information for controlling, decision-making and also disaster planning. Lack of disaster assessment causes you to make unsuitable decisions based on limited or inadequate data which leads to imperfect disaster response. According to IFRC, disaster response operation will have an unsuitable function without disaster assessment. This paper presents the principles and concepts of disaster assessment.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

Ghanavatianmehr Mojtaba

Journal: 

JOURNAL OF CYBER LAW

Issue Info: 
  • Year: 

    2025
  • Volume: 

    2
  • Issue: 

    2
  • Pages: 

    73-88
Measures: 
  • Citations: 

    0
  • Views: 

    14
  • Downloads: 

    0
Abstract: 

With the advancement of artificial intelligence and the proliferation of autonomous interactions among intelligent systems, inter-AI contracts have emerged as a novel domain within cyber law. The primary research question of this study is how existing legal frameworks can govern contracts between AI systems and what challenges arise regarding liability, legal validity, and enforcement of these contracts. The significance of this topic lies in the fact that AI-AI interactions may create legal obligations without direct human intervention, rendering traditional laws insufficient to address emerging needs. The objective of this article is to provide a legal analysis of inter-AI contracts and to examine the capacity of emerging cyber law principles to address this phenomenon. The research method is descriptive–analytical, based on documentary study, including the review of existing laws, international instruments, and hypothetical inter-AI contract examples. The results indicate that while traditional concepts of contracts and legal responsibility offer preliminary adaptability to AI-AI interactions, legal gaps and the lack of clarity in defining machine intent and obligations necessitate the development of novel frameworks and specific cyber law regulations. The innovation of this study lies in presenting a combined analysis of contract law and emerging cyber law concepts for inter-AI interactions and proposing legal criteria for validating and ensuring the enforceability of such contracts. The findings can guide the formulation of comprehensive regulations and legal safeguards for autonomous intelligent interactions.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Issue Info: 
  • Year: 

    2019
  • Volume: 

    11
  • Issue: 

    1
  • Pages: 

    57-70
Measures: 
  • Citations: 

    0
  • Views: 

    174
  • Downloads: 

    171
Abstract: 

Nowadays growing threat and security risks in information and communication technology and also increasing use of information and communication technologies are two main decision makers for organizations, service providers and the general public. Resource limitation and the lack of expert in cyber security have made lots of major challenge for different service providers in dealing with and managing security threats. In many developing countries, this problem has been solved using Managed Security Service Providers. Managed Security Services are network-based security services that are outsourced by a trusted third party. The diversity of Managed Security Service Providers affects the effectiveness and efficiency of decision making in this area. Therefore, in order to outsource the security services, the assessment of these organizations is inevitable. This assessment can be done by various mechanisms. One of the acceptable strategies in the security is the maturity model. Maturity models are step-by-step solutions to grow organizational capabilities Along with a predicted, desirable, and logical path. In fact, maturity models provide standard way to assess process maturity along with business process improvement. Until now, no maturity model has been developed to assess the Managed Security Service Providers. Therefore, in this paper, we have proposed a novel model to external evaluation of the Managed Security Service Providers based on maturity model. The evaluation of the proposed maturity model is based on multiple case studies. We have optimized our proposed model by using these case studies in three different MSSPs.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Issue Info: 
  • Year: 

    2025
  • Volume: 

    17
  • Issue: 

    4
  • Pages: 

    50-58
Measures: 
  • Citations: 

    0
  • Views: 

    0
  • Downloads: 

    0
Abstract: 

Production is a key component of every nation’s economy, yet the manufacturing sector faces major challenges and opportunities due to rapid digital transformation. Many companies have not fully adapted to these technological shifts, limiting their ability to gain competitive advantages. Research indicates that integrating digital approaches into production processes can enhance efficiency and create significant value, turning digital transformation from a strategic recommendation into a necessity. However, there is still limited guidance on how to systematically assess the digital maturity of manufacturing firms and support their progress toward higher maturity levels. This study aims to develop a comprehensive framework for evaluating digital maturity in the manufacturing sector. Drawing on both literature and empirical data, the framework was designed and validated to help organizations understand their current digital status and identify areas for improvement. It defines evaluation domains, maturity levels, and assessment criteria, along with a structured evaluation method to guide practitioners in achieving higher levels of digital transformation.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Journal: 

PAYAVARD SALAMAT

Issue Info: 
  • Year: 

    2022
  • Volume: 

    16
  • Issue: 

    1
  • Pages: 

    1-9
Measures: 
  • Citations: 

    0
  • Views: 

    377
  • Downloads: 

    0
Abstract: 

Background and Aim: Enterprise Architecture based on laboratory needs, and by using of the commons of valid and existing enterprise architecture frameworks, leads to the aligns of needs with organizational strategies and goals and information technology infrastructure. The aim of this study was the investigation of the effect of enterprise architecture model implementation on laboratory information management systems. Materials and Methods: In this quantitative study in 2020, proposed enterprise architecture model which was based on the compilation of Zachman and service-oriented architecture models was investigated by the maturity of enterprise architecture at Sharif University. The statistical community of this study was 100 laboratory specialists based on Morgan sample determination table CCM (Capacity Maturity Model), which was designed based on the Likert spectrum, was used as a questionnaire assessment tool. For data analysis, descriptive indicators such as frequency, percentage and one-sample t-test to compare the mean in SPSS software was used. Results: Assessing the maturity of enterprise architecture including four areas of IT (Information Technology) planning and organization, IT development and implementation, IT service and support, and IT monitoring and evaluation. Among the various dimensions of enterprise architecture maturity, the lowest average was related to the field of monitoring and evaluation and the highest average was related to the field of service and support. Dimensions in terms of status were: service and support dimension, planning and organizing dimension, development and implementation dimension, monitoring and evaluation dimension, respectively. The test results were significantly different in the areas related to the maturity of enterprise architecture, including the planning and organization areas, development and implementation, service and support (P<0. 0001). There was no significant difference in monitoring and evaluation. Conclusion: The use of enterprise architecture specific to laboratory management systems causes the optimal use of resources and ease of interaction. Evaluation of the implementation of the proposed architectural framework in the laboratory environment showed that the proposed model has matured in the three areas of planning and organization, development and implementation, service and support. In order to improve the maturity of enterprise architecture, more attention should be paid to the field of monitoring and evaluation and the reform program should start from this field.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

IZADI YAZDAN ABADI A.

Issue Info: 
  • Year: 

    2009
  • Volume: 

    1
  • Issue: 

    1
  • Pages: 

    53-62
Measures: 
  • Citations: 

    0
  • Views: 

    1763
  • Downloads: 

    0
Abstract: 

Introduction: This research has been implemented to develop and evaluate the validity of the scale of staff maturity assessment. To do this, a questionnaire was provided to asses the maturity and its face and content validity were reviewed through views of 30 specialists. Items, which confirmed by more than %75 specialists, were selected as appropriate items.Method: The prepared questionnaire was eonducted among 37 staff of Tarbiat  Moallem University as a pre-test and the coefficient was while some items deleted from the questionnaires %84. The final questionnaire was used on a sample of 248 members who had been selected randomly and classification method and its final reliability coefficient was again reliability %84.Results: Factor analysis showed that %60 of maturity points variance. The results of VARIMAX rotation summarized maturity indexes in four fields including psychological, mental, social and working maturities. The questionnaire may be used to measure staff maturity in research, employment and management.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

Issue Info: 
  • Year: 

    2023
  • Volume: 

    31
  • Issue: 

    -
  • Pages: 

    192-207
Measures: 
  • Citations: 

    1
  • Views: 

    18
  • Downloads: 

    0
Keywords: 
Abstract: 

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Author(s): 

Shahidi Delshad Elham

Issue Info: 
  • Year: 

    2025
  • Volume: 

    6
  • Issue: 

    1
  • Pages: 

    65-66
Measures: 
  • Citations: 

    0
  • Views: 

    6
  • Downloads: 

    0
Abstract: 

In recent years, a growing number of patients have increasingly relied on large language models (LLMs) and other artificial intelligence (AI) tools to interpret their symptoms prior to visiting a clinic or hospital. Advocates assert that these technologies democratize access to health information and empower patients to make informed decisions. They may even alleviate unnecessary visits that burden already strained healthcare systems [1]. However, underlying this promise of empowerment is the risk of misinformation, over-or under-triage, and exacerbated health disparities.   As AI-mediated self-triage becomes more prevalent, it is imperative to carefully evaluate its contributions against its potential harms. Surveys indicate that up to 40 percent of online health seekers report feeling more confident about subsequent steps after interacting with an AI tool [2]. For individuals in remote areas or those facing long wait times, this reassurance can alleviate anxiety and reduce unnecessary clinic visits, thereby freeing up limited resources for genuinely urgent cases. A 2025 systematic review found that LLMs achieved moderate triage accuracy (57. 8–76. 0 percent), comparable to—or in some instances surpassing—both standard symptom-assessor applications and layperson judgment (47. 3–62. 4 percent) [3]. However, these studies often rely on retrospective datasets and controlled scenarios, which may not fully capture real-world variability in patient presentations or the influence of user interface design on decision-making. From the clinician’s perspective, systematic comparisons reveal that while some AI models match human performance in identifying common conditions, they struggle with atypical presentations and complex multi-morbidity. For instance, GPT-4 placed the correct diagnosis within its top three suggestions approximately 42 percent of the time, yet identified the correct primary diagnosis only 22 percent of the time [4]. A reassuring output of “likely viral infection” in a patient with evolving myocarditis may delay critical intervention, whereas an overly cautious algorithm might recommend emergency care for benign issues, contributing to overcrowded emergency departments and diverting attention from truly critical patients. Health system administrators have noted that AI-driven self-triage can reshape care pathways, sometimes for the better. Integrating AI tools into telemedicine platforms can direct high-risk cases directly to on-call providers, thereby shortening the time to treatment [5]. However, without robust oversight, these same tools could create backlogs when false positives trigger unnecessary referrals. To maximize the benefits, administrators must monitor AI output metrics, track referral completion rates, and ensure seamless handoffs between virtual assessments and in-person care. Ethical considerations further complicate this issue. AI models trained on datasets that under-represent certain ethnic groups or socioeconomic strata may yield biased recommendations, deepening existing health inequities. Patients with low health literacy or limited English proficiency may misinterpret AI guidance and trust it as a substitute for professional evaluation. Clear disclaimers, culturally sensitive interfaces, and multimodal explanations (text, audio, and graphics) are essential for mitigating these risks and fostering digital health equity. The efficacy of AI-driven self-assessment is contingent upon its judicious implementation. It is imperative to invest in prospective validation studies encompassing diverse populations, establish regulatory frameworks that ensure transparency in model performance, and educate both patients and healthcare providers regarding the capabilities and limitations of these tools. Interdisciplinary collaboration, involving nurses, physicians, data scientists, ethicists, and patient advocates, is essential for designing AI-enhanced care pathways that improve safety, efficiency, and equity. Consequently, we urge all stakeholders in the health sciences to take action: clinicians should rigorously evaluate and monitor AI recommendations, health information technologists should develop interfaces that emphasize clarity and inclusivity, administrators should integrate AI into workflows with appropriate safeguards, educators should incorporate AI literacy into professional training, policymakers should establish guidelines that balance innovation with patient protection, and patients should actively engage by critically appraising AI outputs, participating in shared decision-making, and reporting inaccuracies to refine these systems. By uniting our expertise and prioritizing patient welfare, we can leverage the potential of AI self-assessment while mitigating its possible drawbacks.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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Issue Info: 
  • Year: 

    2024
  • Volume: 

    12
  • Issue: 

    1
  • Pages: 

    1-9
Measures: 
  • Citations: 

    1
  • Views: 

    14
  • Downloads: 

    0
Abstract: 

Background: End user opinions are crucial for the success of health applications, particularly in the emerging field of artificial intelligence (AI) in medicine. Understanding end users' perspectives is essential for the acceptance and effectiveness of AI. Objective: This systematic review aims to comprehensively analyze existing literature on end users' perspectives and acceptance models for AI applications. By synthesizing and critically evaluating research, this review seeks to identify key themes, methodologies, and knowledge gaps. Materials and Methods: A systematic review was conducted in PubMed in 2023 to identify relevant peer-reviewed articles written in English. Inclusion criteria focused on original studies that validated assessment AI models from users' perspectives. Information extracted included publication details, countries of research, participant characteristics, data gathering and analysis methods, and attributes of the proposed models. Results: Out of 3714 records, 19 papers were included in the study that were published between 2019 and 2022. Participants belonged to six categories: physicians, medical students, nurses, patients, and general public. The most important assessed factors in identified papers were “ethical issues, trust, and anxiety”, “usability”, “self-efficacy and knowledge”, “social”, “benefits”, “quality of the AI products and service support”, “AI acceptance, resistance of AI, attitude, and satisfaction” were explored. In addition, the commonly examined several moderating variables, including perceived ease of use, perceived usefulness, and perceived risks. Conclusions: The findings contribute to understanding current trends and practices in end users' perspective research. Future studies should continue exploring end users' perspectives to enhance the development and implementation of effective AI systems in healthcare.

Yearly Impact: مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

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