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  <title><![CDATA[PhD Defense by Hong Seo Lim]]></title>
  <body><![CDATA[<p>Hong Seo Lim<br />
BME PhD Defense Presentation<br />
<br />
<strong>Date</strong>:2022-06-27<br />
<strong>Time</strong>: 10AM - 12PM<br />
<strong>Location / Meeting Link</strong>: EBB Krone 1005 CHOA Seminar Room / <a href="https://gatech.zoom.us/j/98561785488">https://gatech.zoom.us/j/98561785488</a><br />
<br />
<strong>Committee Members:</strong><br />
Peng Qiu, Ph.D. (Advisor), Edward Botchwey, Ph.D. Kavita Dhodapkar, M.D. Eva Dyer, Ph.D. Eberhard Voit, Ph.D.<br />
<br />
<br />
<strong>Title</strong>: Developing Graph-based Computational Algorithms for Single-cell Data Science<br />
<br />
<strong>Abstract:</strong><br />
Explosive advances in single-cell measurement technologies allow in-depth analysis of the cellular heterogeneity of the biological systems of interest. Single-cell profiling through flow cytometry, mass cytometry, and single-cell RNA sequencing (scRNA-seq) has led to novel discoveries in immunology, virology, neuroscience, and cancer biology. Single-cell data science is a new discipline encompassing the usage of statistics, mathematics, or machine learning for various computational challenges arising in single-cell profiling data and subsequent analysis steps. In this thesis, we have identified several single-cell related challenges that need proper attention: (1) proper integration of single-cell datasets acquired from different technologies or affected by batch effect, (2) quantification of cluster-like and trajectory-like characteristics of scRNA-seq datasets for proper algorithm choice, and (3) quantification of cell-type-specific differences across the single-cell dataset. We provide graph-based computational tools to tackle these challenges. The novel computational tools we developed are as follows: (1) We propose a new algorithm, JSOM, to align two datasets through jointly evolved self-organizing maps. We demonstrated that the JSOM maps could be used to identify related clusters between the two datasets, and we demonstrated the alignment of various single-cell profiling datasets. (2) We present five scoring metrics and a new pipeline to quantify geometric characteristics of scRNA-seq data, more specifically, the clusterness and trajectoriness of the data. The proposed scoring metrics are based on pairwise distance distribution, persistent homology, vector magnitude, Ripley&#39;s K, and degrees of separation, and we demonstrated that our pipeline could quantify clusterness and trajectoriness of scRNA-seq data. (3) We present a new pipeline to quantify cell-type-specific differences and identify features driving the variation. Our pipeline exploits the quantifiable differences seen in the low-dimensional UMAP and used SHAP analysis to measure the differences, and we demonstrated the algorithm&rsquo;s utility in interpreting and quantifying differences in various single-cell profiling data. Overall, the developed computational tools would improve various steps of the single-cell data analysis pipeline, contributing to solving computational challenges posed in the field of single-cell data science.</p>
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