1 Predictive metabolomic profiling of microbial communities using amplicon or metagenomic sequences 1.1 Methods 1.1.1 Training and validation cohort descriptions 1.1.2 Taxonomic and functional profiling 1.1.3 Metabolite profiling 1.1.4 Elastic net regularization 1.1.5 Significance testing with shuffled data 1.1.6 Gene set enrichment analysis 1 Predictive metabolomic profiling of microbial communities using amplicon or metagenomic sequences 开发的软件名字叫做Melonn
1 Abstract 2 Methods 2.1 Study population 2.2 Definition of the fetal and birth measurements 2.3 Metabolic profiling by NMR 2.4 Statistical analysis 2.4.1 Step 1. Identify main sources of metabolic variation between first and third trimesters of gestation 2.4.2 Step 2. Identify metabolites associated with fetal growth 2.4.3 Step 3. Assess the extent to which the metabolite panel associated with fetal growth can be explained by known growth-related factors
0.0.1 Machine learning for biomedical information
freenome
freenome intergateing innovative science to develop a blood-based cancer test starting with CRC.
cfDNA (cell free DNA).
Interpreting deep learning models of regulatory DNA
Anshul Kundaje
decoding genome function
control elements gene
ATAC-seq/DNase-seq
ChIP-seq
prediCtive model of regularity DNA
Just transform DNA sequence to dummy matrxi.
0.0.1 Machine learning for biomedical information
hierarchical latent variable models?
0.0.1 Machine learning for biomedical information
freenome
freenome intergateing innovative science to develop a blood-based cancer test starting with CRC.
cfDNA (cell free DNA).
Interpreting deep learning models of regulatory DNA
Anshul Kundaje
decoding genome function
control elements gene
ATAC-seq/DNase-seq
ChIP-seq
prediCtive model of regularity DNA
Just transform DNA sequence to dummy matrxi.
0.0.1 Machine learning for biomedical information
hierarchical latent variable models?