Programa del congreso
Sesión | ||
1C
Temas de la sesión: Virtual
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Ponencias | ||
9:00 - 9:08
The influence of artificial intelligence on business operational efficiency: a systematic review 1Universidad Tecnológica del Perú UTP - (PE), Perú; 2Universidad Continental - (PE) This article analyzes the impact of artificial intelligence on business operational efficiency through a systematic literature review based on the PICOC methodology. A total of 219 records were collected in Scopus, of which 44 met the inclusion criteria after applying the PRISMA statement. The results identified factors limiting operational efficiency, such as lack of automation, human error and resistance to change. AI emerged as a key driver for improving productivity, automating processes and optimizing decisions, with the greatest impact in sectors such as manufacturing, logistics and finance. Companies that adopt AI show greater flexibility, cost reduction and resource optimization compared to those that do not. It is concluded that AI transforms operational efficiency, with more marked effects in sectors where automation is crucial, highlighting it as a strategic tool to improve business performance. 9:08 - 9:16
Artificial Intelligence Models for the Diagnosis of Gastrointestinal Disorders: A Systematic Review of Literature Universidad Tecnológica del Perú UTP - (PE), Perú This study examines Artificial Intelligence (AI) models' effectiveness in detecting and classifying gastrointestinal disorders (GID) based on complex patterns and biometric data. The research highlights the impact of different AI approaches, focusing on Deep Learning (DL), Machine Learning (ML), and hybrid ML+DL models. The results show that CNN-based DL models perform exceptionally well when handling large volumes of data, achieving high accuracy, especially in identifying conditions such as polyps, ulcers, and Crohn's disease. Hybrid models that combine ML and DL architectures offer superior performance, with lower variability in results and higher diagnostic accuracy. 9:16 - 9:24
Deep Learning Models for the Early and Effective Detection of Diabetes Through Foot Images: A Systematic Review Universidad Tecnológica del Perú UTP - (PE), Perú Abstract– This Systematic Literature Review (SLR), conducted under the PRISMA methodology, aims to identify recently proposed 9:24 - 9:32
Effectiveness of Mobile Technologies in the Treatment of Autism Spectrum Disorder: A Systematic Review Universidad Tecnológica del Perú UTP - (PE), Perú Abstract— The advancement in the development of mobile 9:32 - 9:40
Systematic Literature Review: Artificial intelligence as assistive technology for persons with disabilities Universidad Tecnológica del Perú UTP - (PE), Perú The systematic review on the use of artificial intelligence as assistive technology aims to provide an analysis of the impact of this technology in improving the quality of life of people with disabilities. It was carried out through the review of 18 articles obtained from Scopus, using the PRISMA methodology with inclusion criteria: use of Spanish/English language, and especially, with a focus on AI applied to various disabilities. It was found that the use of these tools significantly improves autonomy and mobility, which contributes to social inclusion; the limitations identified were accessibility and limited personalization. It is debated that these may be due to specific factors, such as the person's age and prior experience with technological devices, highlighting the need for technologies to be more intuitive and quickly adaptable. This study offers a broad analysis of the topic, identifying the causes of potential issues that may arise with the use of these technologies, and suggesting ways to expand their use so they can continue to provide meaningful support in the daily lives of those who need them. 9:40 - 9:48
Impact of convolutional neural networks on brain tumor classification: A systematic analysis Universidad Tecnológica del Perú UTP - (PE), Perú This systematic literature review assessed the impact of brain tumor classification on magnetic resonance imaging using convolutional neural networks (CNN). The PRISMA strategy was used to organize and document the study selection and evaluation process. From an initial total of 448 articles identified in Scopus and Web of Science, duplicates were eliminated, and inclusion and exclusion criteria were applied, resulting in the evaluation of 103 highly relevant and quality studies. The most used architectures, including ResNet-50, VGG16 and EfficientNet-B4, were identified and analyzed, assessing their effectiveness in terms of accuracy, sensitivity and F1-score. The results showed that these architectures can achieve accuracy levels above 98%, making them effective for potential implementation in clinical settings. In addition, key pre-processing techniques, such as normalization and denoising, were highlighted as contributing to improved image quality and reduced variability. However, important barriers were identified, such as the scarcity of high-quality data and privacy constraints, which limit the generalizability and robustness of the models. The review concludes that the creation of standardized datasets and the development of innovative methodological approaches are essential to advance the clinical applicability of CNNs in brain tumor diagnosis. |