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UCU Writing Week 3rd Edition 2025

The 26th Guild Government, in partnership with UCU Writing Center, invite you all to take part in the 2nd Edition of the UCU Writing Week

Writing Week Theme: ‘Empowering Voices Through Writing’

Writing is a powerful tool for sharing ideas and expressing the messages God places on our hearts.

Date: 27th October – 31st October 2025

Venue: UCU Writing Centre (Hamu Mukasa Library LEVEL 2 )
It’s a special time dedicated to improving our writing skills, both academic and professional growth. Let’s unite, support each other, and grow as a community of excellent communicators for His glory.

Don’t miss out—see you there!

UCU Writing Center & 27th Guild Government

Library Week 27th – 30th 2025

The Library is running its annual Library and Open Access Week starting on the 27th to the 30th of October 2025.

Under the theme; “Your Responsible Use of Artificial Intelligence(AI)”

We are looking forward to engaging with you in the following ways:

  • Visits to the UCU Libraries (Hamu Mukasa, Bishop Tucker, Archives, Kampala campus, and UCU School of Medicine and School of Dentistry libraries) to explore the resources and services available to you.
  • Training: learn more about your access options to your digital library, on and off-campus, citations and referencing (Mendeley / Zotero), ORCID and Preventing plagiarism, Open Access publishing, making your research visible, etc.
  • Library tours.
  • Creating your Library accounts.
  • Feedback: what is your library story?

 …and much more!

For more information, kindly refer to the attached promotional flyer.

Thank you,

UCU Libray

A Research Project by UCU Centre for Computational Biology: A study about employing phylogenetic tree shape statistics to resolve the underlying host population structure

Ateam of Researchers from the Uganda Christian University Center for Computational Biology recently concluded and published a study on ” employing phylogenetic tree shape statistics to resolve the underlying host population structure”.

The key researchers include the UCU Deputy Vice Chancellor for Academic Affairs, Rev. Dr. John Kitayimbwa, the Executive Director of Uganda Virus Research Institute Dr. Pontiano Kaleebu among others.click here to access the study

Below is an outline of the study:

Abstract
Background: Host population structure is a key determinant of pathogen and infectious disease transmission patterns. Pathogen phylogenetic trees are useful tools
to reveal the population structure underlying an epidemic. Determining whether a
population is structured or not is useful in informing the type of phylogenetic methods
to be used in a given study. We employ tree statistics derived from phylogenetic trees
and machine learning classifcation techniques to reveal an underlying population
structure.


Results: In this paper, we simulate phylogenetic trees from both structured and nonstructured host populations. We compute eight statistics for the simulated trees, which
are: the number of cherries; Sackin, Colless and total cophenetic indices; ladder length;
maximum depth; maximum width, and width-to-depth ratio. Based on the estimated
tree statistics, we classify the simulated trees as from either a non-structured or a structured population using the decision tree (DT), K-nearest neighbor (KNN) and support
vector machine (SVM). We incorporate the basic reproductive number (R0) in our tree
simulation procedure. Sensitivity analysis is done to investigate whether the classifers
are robust to different choice of model parameters and to size of trees. Cross-validated
results for area under the curve (AUC) for receiver operating characteristic (ROC) curves
yield mean values of over 0.9 for most of the classifcation models.


Conclusions: Our classification procedure distinguishes well between trees from
structured and non-structured populations using the classifers, the two-sample Kolmogorov-Smirnov, Cucconi and Podgor-Gastwirth tests and the box plots. SVM models
were more robust to changes in model parameters and tree size compared to KNN
and DT classifers. Our classification procedure was applied to real -world data and the
structured population was revealed with high accuracy of 92.3% using SVM-polynomial
classifier.

Researchers: Hassan W. Kayondo, Alfred Ssekagiri, Grace Nabakooza, Nicholas Bbosa, Deogratius Ssemwanga, Pontiano Kaleebu, Samuel Mwalili , John M. Mango , Andrew J. Leigh Brown , Roberto A. Saenz, Ronald Galiwango and John M. Kitayimbwa