Repository logo
Andean Publishing ↗
New user? Click here to register. Have you forgotten your password?
  1. Home
  2. Browse by Author

Browsing by Autor "Laura Guio"

Filter results by typing the first few letters
Now showing 1 - 2 of 2
  • Results Per Page
  • Sort Options
  • Loading...
    Thumbnail Image
    Item type: Item ,
    New algorithms for unsupervised cell clustering from scRNA-seq data
    (2024) Melissa Robles; Jorge Díaz-Riaño; Cristhian Forigua; Soledad Ojeda; Laura Guio; Paula Siaucho; Jennifer J Guzmán-Porras; Danilo García-Orjuela; Andrés Naranjo; Silvia Maradei
    Abstract The identification of cell types is a basic step of the pipeline for Single-Cell RNA sequencing data analysis. However, unsupervised clustering of cells from scRNA-seq data has multiple challenges: the high dimensional nature of the data, the sparse nature of the gene expression matrix, and the presence of technical noise that can introduce false zero entries. In this study, we introduce new algorithms for clustering scRNA-seq data. The first algorithm builds a k -MST graph from distances obtained directly from the input data without dimensionality reduction. The computation follows an iterative procedure of k steps in which each step calculates and stores the edges of minimum spanning trees over different subgraphs obtained removing edges selected in previous iterations. The Louvain algorithm is executed on the k -MST graph for cell clustering. We also explored alternatives based on neural networks in which an autoencoder is used to learn the parameters of a Gaussian mixture model, aiming to improve the handling of clusters with different shapes and sizes. Benchmark experiments with simulated data and public datasets show that the algorithms proposed in this work have competitive accuracy, compared to previous solutions, but also that sequencing depth, number of cells and tissue types have important effects on the performance of the algorithms. Moreover, we performed further experiments with scRNA-data taken from a patient with refractory epilepsy. The AE-GMM model achieved the best accuracy for this dataset, and the k -MST ranked first among methods that do not require previous information on the expected number of clusters.
  • Loading...
    Thumbnail Image
    Item type: Item ,
    Retraining and evaluation of machine learning and deep learning models for seizure classification from EEG data
    (Nature Portfolio, 2025) Juan Pablo Carvajal-Dossman; Laura Guio; Danilo García-Orjuela; Jennifer J Guzmán-Porras; Kelly Garcés; Andrés Naranjo; Silvia Juliana Maradei-Anaya; Jorge Duitama

Andean Library © 2026 · Andean Publishing

  • Accessibility settings
  • Privacy policy
  • End User Agreement
  • Send Feedback