DeepOmicsAE: Representing Signaling Modules in Alzheimer's Disease with Deep Learning Analysis of Proteomics, Metabolomics, and Clinical Data

被引:4
|
作者
Panizza, Elena [1 ]
机构
[1] Cornell Univ, Dept Mol Med, Ithaca, NY 14853 USA
来源
关键词
DIMENSIONALITY;
D O I
10.3791/65910
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Large omics datasets are becoming increasingly available for research into human health. This paper presents DeepOmicsAE, a workflow optimized for the analysis of multi-omics datasets, including proteomics, metabolomics, and clinical data. This workflow employs a type of neural network called autoencoder, to extract a concise set of features from the high-dimensional multi-omics input data. Furthermore, the workflow provides a method to optimize the key parameters needed to implement the autoencoder. To showcase this workflow, clinical data were analyzed from a cohort of 142 individuals who were either healthy or diagnosed with Alzheimer's disease, along with the proteome and metabolome of their postmortem brain samples. The features extracted from the latent layer of the autoencoder retain the biological information that separates healthy and diseased patients. In addition, the individual extracted features represent distinct molecular signaling modules, each of which interacts uniquely with the individuals' clinical features, providing for a mean to integrate the proteomics, metabolomics, and clinical data.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Deep learning analysis of UPLC-MS/MS-based metabolomics data to predict Alzheimer's disease
    Wang, Kesheng
    Theeke, Laurie A.
    Liao, Christopher
    Wang, Nianyang
    Lu, Yongke
    Xiao, Danqing
    Xu, Chun
    JOURNAL OF THE NEUROLOGICAL SCIENCES, 2023, 453
  • [2] Intelligent Data Processing for Alzheimer's Disease Using Deep Learning
    Garg, Nidhi
    Chutani, Gautam
    Bohra, Himanshu
    Chaudhary, Shagun
    Sharma, Preeti
    RECENT ADVANCES IN ELECTRICAL & ELECTRONIC ENGINEERING, 2024,
  • [3] Deep and joint learning of longitudinal data for Alzheimer's disease prediction
    Lei, Baiying
    Yang, Mengya
    Yang, Peng
    Zhou, Feng
    Hou, Wen
    Zou, Wenbin
    Li, Xia
    Wang, Tianfu
    Xiao, Xiaohua
    Wang, Shuqiang
    PATTERN RECOGNITION, 2020, 102 (102)
  • [4] Machine learning and feature selection for the analysis of Alzheimer Metabolomics Data
    Belacel, Nabil
    Cuperlovic-Culf, Miroslava
    PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE (ICPRAI 2018), 2018, : 222 - 226
  • [5] Biomarkers for the Clinical Diagnosis of Alzheimer's Disease: Metabolomics Analysis of Brain Tissue and Blood
    Wang, Yang-Yang
    Sun, Yan-Ping
    Luo, Yu-Meng
    Peng, Dong-Hui
    Li, Xiao
    Yang, Bing-You
    Wang, Qiu-Hong
    Kuang, Hai-Xue
    FRONTIERS IN PHARMACOLOGY, 2021, 12
  • [6] Proteomics analysis of the Alzheimer's disease hippocampal proteome
    Sultana, Rukhsana
    Boyd-Kimball, Debra
    Cai, Jain
    Pierce, William M.
    Klein, Jon B.
    Merchant, Michael
    Butterfield, D. Allan
    JOURNAL OF ALZHEIMERS DISEASE, 2007, 11 (02) : 153 - 164
  • [7] A Survey of Deep Learning for Alzheimer's Disease
    Zhou, Qinghua
    Wang, Jiaji
    Yu, Xiang
    Wang, Shuihua
    Zhang, Yudong
    MACHINE LEARNING AND KNOWLEDGE EXTRACTION, 2023, 5 (02): : 611 - 668
  • [8] Analysis of longitudinal data in an Alzheimer's disease clinical trial
    Thomas, RG
    Berg, JD
    Sano, M
    Thal, L
    STATISTICS IN MEDICINE, 2000, 19 (11-12) : 1433 - 1440
  • [9] Deep Learning of Speech Data for Early Detection of Alzheimer's Disease in the Elderly
    Ahn, Kichan
    Cho, Minwoo
    Kim, Suk Wha
    Lee, Kyu Eun
    Song, Yoojin
    Yoo, Seok
    Jeon, So Yeon
    Kim, Jeong Lan
    Yoon, Dae Hyun
    Kong, Hyoun-Joong
    BIOENGINEERING-BASEL, 2023, 10 (09):
  • [10] Classification of Alzheimer's Disease with Deep Learning on Eye-tracking Data
    Sriram, Harshinee
    Conati, Cristina
    Field, Thalia
    PROCEEDINGS OF THE 25TH INTERNATIONAL CONFERENCE ON MULTIMODAL INTERACTION, ICMI 2023, 2023, : 104 - 113