It was established in 2009-2010 under the name of the College of Computer Technology, then its name was changed to the College of Information Technology in 2012, as a result of the development of scientific curricula. It is one of the advanced colleges in the university in terms of infrastructure and laboratories. The college grants a bachelor's degree (computer science) according to the departments mentioned above. The college follows the course system. Postgraduate studies (Master - PhD) in the software department.
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The University of Babylon is one of the largest universities in Iraq. It is situated on the banks of the Euphrates River in the province of Babil in central Iraq. The institution is made up of 21 colleges spread across three main locations in Hilla. The central university campus is in the medical colleges complex in the center of Hilla -Al-Iskan.
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Master’s Thesis at the College of Information Technology Explores Prediction Consensus (Binding Sites) with Transcription Factor Protein from DNA-Seq Data Using Machine Learning Duhaa Fadill Abbas The Department of Software at the College of Information Technology, University of Babylon, witnessed the defense of a Master’s thesis presented by student Shahad Raed Hadi, entitled “Prediction Consensus (Binding Sites) with Transcription Factor Protein from DNA-Seq Data Using Machine Learning” The thesis defense was supervised by Asst. Prof. Dr. Sura Zaki Naji and took place at 9:00 a.m. on Tuesday, August 26, 2025, in the college’s conference hall. The study addressed gene expression regulation as a fundamental process in biological systems, carried out through interactions between transcription factors and specific DNA sequences known as transcription factor binding sites. These sites, often located in promoter regions, play a critical role in either activating or repressing gene transcription. The researcher highlighted that traditional experimental methods for identifying transcription factor binding sites face major challenges, including high costs, extensive manual labor, and the need for significant computational resources. In contrast, computational approaches offer efficient, accurate, scalable, and low-cost alternatives for analyzing large-scale genomic data. The thesis employed a deep learning model to predict transcription factors and their binding sites within the DNA sequences of Arabidopsis thaliana, using data derived from the AGRIS database. The dataset underwent preprocessing to remove noise and redundancy, and was represented using techniques such as k-mer encoding and One-Hot Encoding. The model was built upon a Convolutional Neural Network (CNN) integrated with an Attention Mechanism to improve prediction accuracy by enabling the model to focus on biologically significant regions. The model architecture comprised two main components: one for predicting binding sites, and the other for identifying the corresponding transcription factors. Through extensive experimentation and optimization, ten representative binding sites were selected from a total of 471 unique sites for training and evaluation, ensuring a balance between diversity and generalization capability.
by: Duhaa Fadill Abbas
Date: 30/08/2025
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