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Found 3841 matches for "All Articles"

Brain Tumor Detection: Integrating Machine Learning and Deep Learning for Robust Brain Tumor Classification

Accurate detection and classification of brain tumors are essential for timely diagnosis and effective treatment planning. This study presents an integrated framework leveraging both machine learning (ML) and deep learning (DL) models for brain tumor detection and classification using MRI images. Two publicly available datasets are utilized: one for binary classification (tumor vs. no tumor) and another for multiclass classification (glioma, meningioma, and pituitary tumors). Comprehensive preprocessing steps, including resizing, feature extraction using the Gray Level Co-occurrence Matrix (GLCM), and feature selection via Chi-square testing, were employed to optimize the dataset for modeling. Machine learning models such as Decision Trees, K-Nearest Neighbors (KNN), Support Vector Machines (SVM), and AdaBoost were compared with deep learning architectures like Convolutional Neural Networks (CNNs) and the pre-trained VGG16 model. Hyperparameter optimization techniques, including grid search and the Adam optimizer, were used to enhance model performance. The models were evaluated using metrics such as accuracy, precision, recall, F1-score, Mean Squared Error (MSE), and Mean Absolute Error (MAE). Results indicate that the VGG16 model consistently outperformed other approaches, achieving high validation accuracy. This study highlights the potential of integrating ML and DL techniques for accurate and efficient brain tumor detection and classification, offering valuable tools for medical diagnostics.

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Hassan Al Sukhni mail -
Qusay Bsoul mail -
Fadi yassin Salem Al jawazneh mail -
Raghad W. Bsoul mail -
Diaa Salama AbdElminaam mail -
Magdy Abd-Elghany mail -
Yasmin Alkady mail -
Ibrahim A. Gomaa mail
link https://doi.org/10.54216/JISIoT.150101

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

Deployment of Hybrid Chaotic Hashes for Blockchain Driven Internet 4.0 applications

The evolution of Internet 4.0 demands robust, secure, and scalable solutions to meet the growing needs of digital transactions and interconnectivity, and blockchain technology has emerged as a foundational enabler for these applications. However, blockchain's reliance on traditional cryptographic methods presents vulnerabilities that can be exploited in increasingly sophisticated cyber landscapes. This paper introduces the deployment of Hybrid Chaotic Hashes for enhanced security and efficiency in blockchain-driven Internet 4.0 applications. By integrating chaotic systems with hash functions, hybrid chaotic hashes provide a more unpredictable, complex cryptographic layer that enhances data integrity, confidentiality, and resistance to attacks. The unique properties of chaotic functions—nonlinearity, ergodicity, and sensitivity to initial conditions—make them advantageous for hashing in blockchain environments. This study highlights the practical applicability and resilience of hybrid chaotic hashes which is nonlinear technique in Internet 4.0.

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P. Vinayasree mail -
A. Mallikarjuna Reddy mail
link https://doi.org/10.54216/JISIoT.150102

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

The Impact of Big Data on the Nexus between Financial Leverage and Stock Price Prediction

This research explores the impact of financial leverage on stock price prediction among listed industrial Jordanian companies. Moreover, the effect of big data as a moderating variable on the relationship between financial leverage and stock price prediction. The study uses two types to measure financial leverage according to the terms [short-term and long-term]. The study results point out that only short-term leverage influences stock price prediction among listed industrial Jordanian companies, which it maybe because short-term leverage has a direct impact on a firm situation compared with long-team leverage that resorts it to achieve long-term goals. Furthermore, the findings provide an original contribution by asserting that big data plays a main moderating role when making decisions regarding investment, where it helps in expecting stock prices in companies with financial leverage.

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Ahmad Ibrahim Karajeh mail -
Khaled Aldiabat mail
link https://doi.org/10.54216/JISIoT.150103

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

Exploring the Use of Deep Learning Models for Image Compression in Embedded Systems: Encoder and Decoder Architectures

With the growing demand for efficient image processing in embedded systems, the exploration of deep learning-based image compression methods has emerged as a promising avenue. Traditional image compression techniques, such as JPEG and PNG, face challenges in achieving optimal performance for constrained environments due to their reliance on handcrafted algorithms and limited adaptability. This study investigates the use of deep learning models for image compression tailored to embed systems, focusing on encoder and decoder architectures. By leveraging convolutional neural networks (CNNs) and variational auto encoders (VAEs), we design lightweight models capable of achieving high compression ratios while maintaining visual fidelity. The research emphasizes computational efficiency, ensuring compatibility with the resource constraints of embedded hardware. Key contributions include the development of streamlined architectures optimized for low memory and power usage, along with a comprehensive evaluation of compression quality, reconstruction accuracy, and real-time performance. The results demonstrate that deep learning-based approaches can outperform traditional methods in terms of adaptability and efficiency, paving the way for their integration into next-generation embedded systems.

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Abhiram Potlapalli mail -
Seetharam Khetavath mail
link https://doi.org/10.54216/JISIoT.150104

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

Analyzing the Vulnerability of Consumer IoT Devices to Sophisticated Phishing Attacks and Ransomware Threats in Home Automation Systems

This research presents a new and elaborate security model for IoT devices used in home automation systems. The framework comprises five algorithms: The following models were identified: Vulnerability Assessment (VA), Anomaly Detection with Machine Learning (ADML), Behavior Analysis (BA), Intrusion Detection System (IDS), and Adaptive Security Framework (ASF). Ablation study brings out the specificity of each algorithm and underlines the synergy of the algorithms for IoT device protection. Comparisons with similar procedures confirm higher levels of sensitivity and specificity of the proposed method, as well as enhanced efficiency and tunability. Animated charts give crisp information about the total effects of security methods on different parameters. The proposed security framework has therefore been presented as now a viable solution to complex threats and continuous security for the IoT devices used in home automation systems.

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Raghu Dhumpati mail -
Tejeswar Reddy Velpucharla mail -
L. Bhagyalakshmi mail -
Peruri Venkata Anusha mail
link https://doi.org/10.54216/JISIoT.150105

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

Transmuting Detached Patient Consideration through Secure and Private Healthcare Monitoring Systems

Making use of the approach called SecureConnect, the article titled “Revolutionizing Remote Patient Care with Secure and Private IoT-Based Healthcare Monitoring Systems” describes how it functions. Thanks to the usage of modern encryption methods in its Internet of Things substrate, SecureConnect safeguards patient information and data from falling into the wrong hands as a result of the modern industry it was built for – digital health. The procedures used involve a methodical development and issuance of SecureConnect followed by it being subjected to controlled experimentation, replicating the edifice of the actual healthcare setting for validation. After analyzing the security feature of SecureConnect, we show that it outperforms comparable approaches, namely, SecureMed, iGuardian, and MedGuard by benchmarking SecureConnect’s security architecture. It was also evidenced that there is a highly significant difference between the two systems which supports the idea of how SecureConnect could help to transform the era of remote patient care. The accuracy of SecureConnect to detect all potential threats is 94%, while for SecureMed, iGuardian and MedGuardian; it is 88%, 91% respectively. Sensitivity, one of the measures applied in tracking healthcare, shows SecureConnect’s proficiency at 96 percent, surpassing competitors. The comparison with SecureMed, iGuardian and MedGuardian as for specificity proves its advantage as well: 92% opposed to 89%, 92% and 88% correspondingly. These two numerical outcomes substantiate SecureConnect’s position as an effective new concept in managing remote patient care since consistent out-performing of the assessment indices has been achieved.

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Tejaswi Maddineni mail -
Sanjay Kumar Suman mail -
Salman Shaikh mail -
Surya Kiran Chebrolu mail
link https://doi.org/10.54216/JISIoT.150106

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

Automated validated tool for epileptic seizure detection using deep learning

This paper explores an innovative approach for the automatic detection of epileptic seizures from audio recordings and Heart Rate Variability (HRV) using Convolutional Neural Networks (CNNs). In medical settings, accurately labeling seizure events is critical for patient monitoring. However, manual annotation by experts is not only time-intensive but also highly repetitive. To address this challenge, we developed a structured questionnaire for patients and eyewitnesses, concentrating on observable characteristics during typical seizure events. This questionnaire was used to prospectively study 198 consecutive adult patients with either Psychogenic Non-Epileptic Seizures (PNES) or Epileptic Seizures (ES). For each question, specific signs, symptoms, and risk factors were extracted as variables. The results showed a sensitivity of 95.10% and a specificity of 97.06%, confirming the reliability of the questionnaire. Also, the method proposed in the study categorizes all seizure vocalizations into a singular target event class, modeling the detection task as a binary classification problem target (seizure event) vs. non-target (non-seizure event). The CNN is trained to detect seizure events in short time frames. Experimental results indicate that the method achieves over 92.5% detection accuracy. Furthermore, the research leverages the correlation between pre-ictal epileptic states and HRV features. By addressing the noise interference commonly present during seizures, the proposed model can robustly train the CNN to identify pre-ictal states. The model's performance is promising, yielding an accuracy of over 91.5% for both positive and negative predictions. The proposed system underwent a human evaluation by a group of physicians at Mansoura University Hospital. The results were highly satisfactory, with the doctors expressing strong approval of the system's performance.

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Mahy E. Elemam mail -
A. F. Elgamal mail -
I. Elmenshawi mail -
Hanan E. Abdelkader mail
link https://doi.org/10.54216/JISIoT.150107

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

Developing a system based on Chabot for detecting Epidemics in educational institution

This study presents an intelligent Chabot system powered by Artificial Intelligence (AI) techniques, including GPT-based natural language processing (NLP), designed to predict potential diseases and analyze symptom overlap based on user inputs. The Chabot interprets symptoms entered by users and offers a probabilistic diagnosis that outlines the likelihood of multiple diseases, inclusive of health guidance. In the cases above, the results of expert evaluations came up with very high satisfaction regarding the overall performance of the Chabot: most physicians and specialists said that the system gave only accurate, user-friendly, and efficient data for getting reliable diagnostic information. Besides, the Chabot design makes the identification of data faster and provides support for effective diagnostic protocols; thus, a device highly useful for medical diagnostics and epidemic management is developed, reaching an accuracy rate of as much as 97.5% compared to expert assessment.

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Esraa M. El-mohdy mail -
A. F. Elgamal mail -
W. K. Elsaid mail
link https://doi.org/10.54216/JISIoT.150108

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

A Hybrid Speech Recognition System Using Deep Learning Methods

Speech-to-text Conversion is a type of Speech Recognition Program that effectively takes audio content as input and transcribes it into written words. With increasing technologies and large data corpus, the importance of speech recognition has increased. Now everyone seems to be exploitation Speech Recognition Technology for users to work a tool, perform commands, or write while not having to use a keyboard, mouse, or press any buttons. It is also easy for everyone to utter sound or speak than using hands to be work done and it is also convenient to use. In this paper, a system capable of converting audio files to text has been developed. The proposed system consists of a set of algorithms for processing audio files, where the MFCC algorithm combine with standard deviation was adopted to extract the features of the audio file and convert it into an image. The features of audio files are stored as images because deep learning algorithms can be trained on images better than CSV files. The second part of the proposed system is the design of a deep learning model in which two algorithms, Convolutional Neural Network (CNN) and Deep Neural Network (DNN) are combined to predict words. The model consists of a set of layers to extract the features from the images, choose the best features, then train and classify them based on the proposed DNN model. In this thesis, three types of datasets (Arabic, English, and Real) were adopted to test the proposed system in speech prediction and the accuracy of the proposed system has reached more than 95%.

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Hadeel Luhaib Fouad mail -
Husam Ali Abdulmohsin mail
link https://doi.org/10.54216/JISIoT.150109

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new

Optimized KNN Algorithm for Diabetic Retinopathy Classification with PCA-Based Data Fusion and Cuckoo Search Optimization

Diabetes is a disease that occurs when the body is unable to use the insulin it produces effectively or the body fails to produce enough insulin. One of the most important complications of this disease is diabetic retinopathy (DR), which is considered the main cause of severe visual impairment and blindness. Previous studies have proven that the KNN algorithm is an effective algorithm for solving classification and prediction problems, as the performance of this algorithm rely on determining the value of the K parameter because the inappropriate choice of this value can negatively affect the accuracy of classification. On the other hand, adjusting this value manually is very difficult because this value depends on the state of determining the solution to the problem each time. Therefore, there is still an urgent need to use smart algorithms to adjust this value and obtain an ideal value that ultimately leads to obtaining a very high classification accuracy. In this paper, the Cuckoo Search algorithm was used, which is considered one of the smart and modern algorithms in the field of diagnosis, in addition to applying more than one technique and algorithm to build an integrated system to enhance the accuracy of diagnosis and obtain competitive diagnostic accuracy. The proposed work was implemented using the Debrecen diabetic retinopathy dataset and competitive results were obtained for recall, sensitivity, precision, F1 score, accuracy and specificity (98.05%), (97.30%), (99.01%), (98.70%), (99.70%), and (99.08%), respectively. Our results demonstrate that the Cuckoo Search algorithm is an effective and suitable choice for optimizing the parameters in the KNN algorithm, in addition to enhancing this algorithm to diagnose the disease early and support direct intervention and treatment, and this method lays the foundation for diagnosing other diseases and thus improving patient care in most related fields.

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Ali Azawii Abdul Lateef mail -
Ahmed Subhi Abdalkafor mail -
Ahmed Adil Nafea mail
link https://doi.org/10.54216/JISIoT.150110

Volume & Issue

Vol. Volume 15 / Iss. Issue 1

Details open_in_new