Resumen
Circadian rhythms are driven by an internal molecular clock which controls physiological and behavioral processes. Disruptions in these rhythms have been associated with health issues. Therefore, studying circadian rhythms is crucial for understanding physiology, behavior, and pathophysiology. However, it is challenging to study circadian rhythms over gene expression data, due to a scarcity of time labels. In this paper, we propose a novel approach to predict the phases of un-timed samples based on a deep neural network (DNN) architecture. This approach addresses two challenges: (1) prediction of sample phases and reliable identification of cyclic genes from high-dimensional expression data without relying on conserved circadian genes and (2) handling small sample-sized datasets. Our algorithm begins with initial gene screening to select candidate cyclic genes using a Minimum Distortion Embedding framework. This stage is then followed by greedy layer-wise pre-training of our DNN. Pre-training accomplishes two critical objectives: First, it initializes the hidden layers of our DNN model, enabling them to effectively capture features from the gene profiles with limited samples. Second, it provides suitable initial values for essential aspects of gene periodic oscillations. Subsequently, we fine-tune the pre-trained network to achieve precise sample phase predictions. Extensive experiments on both animal and human datasets show accurate and robust prediction of both sample phases and cyclic genes. Moreover, based on an Alzheimer’s disease (AD) dataset, we identify a set of hub genes that show significant oscillations in cognitively normal subjects but had disruptions in AD, as well as their potential therapeutic targets.
| Idioma original | English |
|---|---|
| Páginas (desde-hasta) | 20653-20670 |
| Número de páginas | 18 |
| Publicación | Neural Computing and Applications |
| Volumen | 36 |
| N.º | 33 |
| DOI | |
| Estado | Published - nov 2024 |
Nota bibliográfica
Publisher Copyright:© The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2024.
Financiación
This study was partially supported by NIH R21 AG070909-01, P30 AG072946-01, R01 HD101508-01, and NSF IIS 2327113.
| Financiadores | Número del financiador |
|---|---|
| National Institutes of Health (NIH) | R21 AG070909-01, R01 HD101508-01, P30 AG072946-01 |
| National Science Foundation Arctic Social Science Program | IIS 2327113 |
ODS de las Naciones Unidas
Este resultado contribuye a los siguientes Objetivos de Desarrollo Sostenible
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Good health and well being
ASJC Scopus subject areas
- Software
- Artificial Intelligence
Huella
Profundice en los temas de investigación de 'Gene expression clock: an unsupervised deep learning approach for predicting circadian rhythmicity from whole genome expression'. En conjunto forman una huella única.Citar esto
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