Sabry, F., T. Eltaras, W. Labda, K. Alzoubi, and Q. Malluhi, "Machine Learning for Healthcare Wearable Devices: The Big Picture", Journal of Healthcare Engineering, vol. 2022: Hindawi, pp. 4653923, 2022. AbstractWebsite

Using artificial intelligence and machine learning techniques in healthcare applications has been actively researched over the last few years. It holds promising opportunities as it is used to track human activities and vital signs using wearable devices and assist in diseases’ diagnosis, and it can play a great role in elderly care and patient’s health monitoring and diagnostics. With the great technological advances in medical sensors and miniaturization of electronic chips in the recent five years, more applications are being researched and developed for wearable devices. Despite the remarkable growth of using smart watches and other wearable devices, a few of these massive research efforts for machine learning applications have found their way to market. In this study, a review of the different areas of the recent machine learning research for healthcare wearable devices is presented. Different challenges facing machine learning applications on wearable devices are discussed. Potential solutions from the literature are presented, and areas open for improvement and further research are highlighted.

Sabry, F., T. Eltaras, W. Labda, F. Hamza, K. Alzoubi, and Q. Malluhi, "Towards On-Device Dehydration Monitoring Using Machine Learning from Wearable Device’s Data", Sensors, vol. 22, no. 5, 2022. AbstractWebsite

With the ongoing advances in sensor technology and miniaturization of electronic chips, more applications are researched and developed for wearable devices. Hydration monitoring is among the problems that have been recently researched. Athletes, battlefield soldiers, workers in extreme weather conditions, people with adipsia who have no sensation of thirst, and elderly people who lost their ability to talk are among the main target users for this application. In this paper, we address the use of machine learning for hydration monitoring using data from wearable sensors: accelerometer, magnetometer, gyroscope, galvanic skin response sensor, photoplethysmography sensor, temperature, and barometric pressure sensor. These data, together with new features constructed to reflect the activity level, were integrated with personal features to predict the last drinking time of a person and alert the user when it exceeds a certain threshold. The results of applying different models are compared for model selection for on-device deployment optimization. The extra trees model achieved the least error for predicting unseen data; random forest came next with less training time, then the deep neural network with a small model size, which is preferred for wearable devices with limited memory. Embedded on-device testing is still needed to emphasize the results and test for power consumption.

Sabry, F., M. Hadhoud, and N. Darwish, "PCA REDUCED FOREST FOR LEARNING TO RANK SPOKEN TRANSCRIPTIONS", Journal of Al-Azhar University Engineering Sector , vol. 13, issue 46, pp. 122-132, 2018.
Sabry, F., W. Labda, A. Erbad, H. Al Jawaheri, and Q. Malluhi, "Anonymity and Privacy in Bitcoin Escrow Trades", Proceedings of the 18th ACM Workshop on Privacy in the Electronic Society, New York, NY, USA, Association for Computing Machinery, pp. 211–220, 2019. Abstract

As a decentralized cryptocurrency, Bitcoin has been in market for around a decade. Bitcoin transactions are thought to be pseudo-anonymous, however, there were many attempts to deanonymize these transactions making use of public data. Escrow services have been introduced as a good private and secure way to handle Bitcoin payments between untrusted parties, where the escrow service acts as the arbitrator in case of disputes. In our work, we examine the privacy and anonymity level of trades done through one of the Bitcoin trading websites offering such escrow services and how using the data they provide for open access through their APIs along with some public scraped data can compromise the privacy and anonymity of trades in some cases. In this paper, we suggest some heuristics and methods to deanonymize Bitcoin escrow trades done on LocalBitcoins.com, a well-known escrow service used especially by people seeking anonymity, and link them to suspect sets of Bitcoin transactions in the blockchain and suspect sets of users. Our research spots privacy weakness points of using escrow services that affects the privacy and anonymity of their users trades and identities. It also shows how tracking down criminals activities across escrow services is possible even without any authority on the escrow service making it less attractive for criminals to use cryptocurrencies and leading it to gain more trust.

Fayek, M., F. Sabry, and S. Hamouda, "Cairo University, CUELCAL: A Live Session With Advanced Features For The MOODLE", International Conference for eLearning Applications in AUC, Cairo, January 2007.
Sabry, F., N. Darwish, and M. Fayek, Learning Gene Regulatory Networks Structures using Dynamic Bayesian Networks, : Cairo University, 2009.
Nassar, M., A. Erradi, F. Sabry, and Q. Malluhi, "A Model Driven Framework for Secure Outsourcing of Computation to the Cloud", IEEE Sixth International Conference on Cloud Computing, USA, Alaska, Springer, July 2014.
Nassar, M., A. Erradi, F. Sabry, and Q. Malluhi, "Secure Outsourcing of Matrix Operations as a Service", IEEE Sixth International Conference on Cloud Computing, USA, July 2013.
Sabry, F., A. Erradi, M. Nassar, and Q. Malluhi, "Automatic Generation of Optimized Workflow for Distributed Computations on Large-Scale Matrices", International Conference on Service Oriented Computing, ICSOC 2014, Paris, Springer, 2014.