2
Predicting a Molecular Fingerprint from an Electron Ionization Mass Spectrum with Deep Neural Networks.
3
Causal integration of multi‐omics data with prior knowledge to generate mechanistic hypotheses
4
Predicting Molecular Fingerprint from Electron−Ionization Mass Spectrum with Deep Neural Networks
5
MOTA: Network-Based Multi-Omic Data Integration for Biomarker Discovery
6
High-throughput screening for improved microbial cell factories, perspective and promise.
7
Towards CNN Representations for Small Mass Spectrometry Data Classification: From Transfer Learning to Cumulative Learning
8
Deep Learning Enable Untargeted Metabolite Extraction from High Throughput Coverage Data-Independent Acquisition
9
Software tools, databases and resources in metabolomics: updates from 2018 to 2019
10
A hybrid and exploratory approach to knowledge discovery in metabolomic data
11
Discrimination of rosé wines using shotgun metabolomics with a genetic algorithm and MS ion intensity ratios
12
Migrating from partial least squares discriminant analysis to artificial neural networks: a comparison of functionally equivalent visualisation and feature contribution tools using jupyter notebooks
13
Pathway Analysis for Targeted and Untargeted Metabolomics.
14
MESSAR: Automated recommendation of metabolite substructures from tandem mass spectra
15
Model balancing: in search of consistent metabolic states and in-vivo kinetic constants
16
Revisiting microbe-metabolite interactions: doing better than random
17
Deep learning for the precise peak detection in high-resolution LC-MS data.
18
Pathway-Activity Likelihood Analysis and Metabolite Annotation for Untargeted Metabolomics Using Probabilistic Modeling
19
Recent advances on constraint-based models by integrating machine learning.
20
Machine learning distilled metabolite biomarkers for early stage renal injury
21
Multiple Compounds Recognition from The Tandem Mass Spectral Data Using Convolutional Neural Network
22
From Samples to Insights into Metabolism: Uncovering Biologically Relevant Information in LC-HRMS Metabolomics Data
23
The METLIN small molecule dataset for machine learning-based retention time prediction
24
BayesMetab: treatment of missing values in metabolomic studies using a Bayesian modeling approach
25
Another look at microbe–metabolite interactions: how scale invariant correlations can outperform a neural network
26
A comparative evaluation of the generalised predictive ability of eight machine learning algorithms across ten clinical metabolomics data sets for binary classification
27
Deep learning for vibrational spectral analysis: Recent progress and a practical guide.
28
Non-invasive diagnosis of non-alcoholic steatohepatitis and fibrosis with the use of omics and supervised learning: a proof of concept study.
29
Using deep learning to evaluate peaks in chromatographic data.
30
The application of artificial neural networks in metabolomics: a historical perspective
31
Random forest-based imputation outperforms other methods for imputing LC-MS metabolomics data: a comparative study
32
Integrating machine learning and multiscale modeling—perspectives, challenges, and opportunities in the biological, biomedical, and behavioral sciences
33
Learning accurate representations of microbe-metabolite interactions
34
Normalizing Untargeted Periconceptional Urinary Metabolomics Data: A Comparison of Approaches
35
Deep Neural Networks for Classification of LC-MS Spectral Peaks.
36
pseudoQC: A Regression‐Based Simulation Software for Correction and Normalization of Complex Metabolomics and Proteomics Datasets
37
Multi-Omics Analysis of Fatty Alcohol Production in Engineered Yeasts Saccharomyces cerevisiae and Yarrowia lipolytica
38
Integrating a generalized data analysis workflow with the Single-probe mass spectrometry experiment for single cell metabolomics.
39
Improved Small Molecule Identification through Learning Combinations of Kernel Regression Models
40
Uncertainty reduction in biochemical kinetic models: Enforcing desired model properties
41
WiPP: Workflow for Improved Peak Picking for Gas Chromatography-Mass Spectrometry (GC-MS) Data
42
Mechanistic insights into bacterial metabolic reprogramming from omics-integrated genome-scale models
43
Machine and deep learning meet genome-scale metabolic modeling
44
Uncertainty estimation and misclassification probability for classification models based on discriminant analysis and support vector machines.
45
Deep in the Bowel: Highly Interpretable Neural Encoder-Decoder Networks Predict Gut Metabolites from Gut Microbiome
46
Revelation of the metabolic pathway of hederacoside C using an innovative data analysis strategy for dynamic multiclass biotransformation experiments.
47
DeepSpectra: An end-to-end deep learning approach for quantitative spectral analysis.
48
Scaling tree-based automated machine learning to biomedical big data with a feature set selector
49
Biological insights through omics data integration
50
Lessons from Two Design-Build-Test-Learn Cycles of Dodecanol Production in Escherichia coli Aided by Machine Learning.
51
Deep MS/MS-Aided Structural-Similarity Scoring for Unknown Metabolite Identification.
52
Computational Methods for the Discovery of Metabolic Markers of Complex Traits
53
Trace, Machine Learning of Signal Images for Trace-Sensitive Mass Spectrometry: A Case Study from Single-Cell Metabolomics.
54
SIRIUS 4: a rapid tool for turning tandem mass spectra into metabolite structure information
55
Systematic Error Removal Using Random Forest for Normalizing Large-Scale Untargeted Lipidomics Data.
56
Linking genetic, metabolic, and phenotypic diversity among Saccharomyces cerevisiae strains using multi-omics associations
57
Comprehensive and Empirical Evaluation of Machine Learning Algorithms for Small Molecule LC Retention Time Prediction.
58
TEX-FBA: A constraint-based method for integrating gene expression, thermodynamics, and metabolomics data into genome-scale metabolic models
59
DIABLO: an integrative approach for identifying key molecular drivers from multi-omics assays
60
Machine Learning of Designed Translational Control Allows Predictive Pathway Optimization in Escherichia coli.
61
Automated supervised learning pipeline for non-targeted GC-MS data analysis
62
Deciphering complex metabolite mixtures by unsupervised and supervised substructure discovery and semi-automated annotation from MS/MS spectra
63
Machine learning applied to enzyme turnover numbers reveals protein structural correlates and improves metabolic models
64
Tools and resources for metabolomics research community: A 2017–2018 update
65
Rapid Prediction of Electron–Ionization Mass Spectrometry Using Neural Networks
66
Machine Learning in Untargeted Metabolomics Experiments.
67
Simulation and reconstruction ofmetabolite-metabolite association networks usinga metabolic dynamic model and correlation based-algorithms
68
PubChem 2019 update: improved access to chemical data
69
Bayesian inference of metabolic kinetics from genome-scale multiomics data
70
Sample-Size Planning for Multivariate Data: A Raman-Spectroscopy-Based Example.
71
Machine Learning Predicts the Yeast Metabolome from the Quantitative Proteome of Kinase Knockouts
72
Recent advances and prospects of computational methods for metabolite identification: a review with emphasis on machine learning approaches
73
A Multi-omic Association Study of Trimethylamine N-Oxide.
74
Multi‐Omics Factor Analysis—a framework for unsupervised integration of multi‐omics data sets
75
A machine learning approach to predict metabolic pathway dynamics from time-series multiomics data
76
Software Tools and Approaches for Compound Identification of LC-MS/MS Data in Metabolomics
77
MiYA, an efficient machine-learning workflow in conjunction with the YeastFab assembly strategy for combinatorial optimization of heterologous metabolic pathways in Saccharomyces cerevisiae.
78
A guide to 13C metabolic flux analysis for the cancer biologist
79
KniMet: a pipeline for the processing of chromatography–mass spectrometry metabolomics data
80
Missing Value Imputation Approach for Mass Spectrometry-based Metabolomics Data
81
HMDB 4.0: the human metabolome database for 2018
82
Global chemical analysis of biology by mass spectrometry
83
Genome-scale mutational signatures of aflatoxin in cells, mice, and human tumors
84
Integration of metabolomics, lipidomics and clinical data using a machine learning method
85
Multi-omics integration accurately predicts cellular state in unexplored conditions for Escherichia coli
86
SUMOFLUX: A Generalized Method for Targeted 13C Metabolic Flux Ratio Analysis
87
Revealing disease-associated pathways by network integration of untargeted metabolomics
88
Sharing and community curation of mass spectrometry data with Global Natural Products Social Molecular Networking
89
Integrative Analysis of Proteomic, Glycomic, and Metabolomic Data for Biomarker Discovery
90
Characterizing Strain Variation in Engineered E. coli Using a Multi-Omics-Based Workflow.
91
Non-targeted UHPLC-MS metabolomic data processing methods: a comparative investigation of normalisation, missing value imputation, transformation and scaling
92
Rapid Prediction of Bacterial Heterotrophic Fluxomics Using Machine Learning and Constraint Programming
93
Deep learning in bioinformatics
94
UPLC–MS retention time prediction: a machine learning approach to metabolite identification in untargeted profiling
95
A Review of Feature Selection and Feature Extraction Methods Applied on Microarray Data
96
Review, evaluation, and discussion of the challenges of missing value imputation for mass spectrometry-based label-free global proteomics.
97
Analytical Methods in Untargeted Metabolomics: State of the Art in 2015
98
Modern modelling techniques are data hungry: a simulation study for predicting dichotomous endpoints
99
isoMETLIN: a database for isotope-based metabolomics.
100
Application of support vector machines to metabolomics experiments with limited replicates
101
Metabolite profiling of a NIST Standard Reference Material for human plasma (SRM 1950): GC-MS, LC-MS, NMR, and clinical laboratory analyses, libraries, and web-based resources.
102
PRIMe Update: Innovative Content for Plant Metabolomics and Integration of Gene Expression and Metabolite Accumulation
103
Translational biomarker discovery in clinical metabolomics: an introductory tutorial
104
RIKEN tandem mass spectral database (ReSpect) for phytochemicals: a plant-specific MS/MS-based data resource and database.
105
Metabolite identification and molecular fingerprint prediction through machine learning
106
An accelerated workflow for untargeted metabolomics using the METLIN database
107
Data mining in the Life Sciences with Random Forest: a walk in the park or lost in the jungle?
108
Missing values in mass spectrometry based metabolomics: an undervalued step in the data processing pipeline
109
Toward global metabolomics analysis with hydrophilic interaction liquid chromatography-mass spectrometry: improved metabolite identification by retention time prediction.
110
Missing values in mass spectrometry based metabolomics: an undervalued step in the data processing pipeline
111
PaDEL‐descriptor: An open source software to calculate molecular descriptors and fingerprints
112
Scikit-learn: Machine Learning in Python
113
How mathematical modelling elucidates signalling in Bacillus subtilis
114
ChemSpider:: An Online Chemical Information Resource
115
MassBank: a public repository for sharing mass spectral data for life sciences.
116
Support vector machines for classification and regression.
117
Combining tissue transcriptomics and urine metabolomics for breast cancer biomarker identification
118
Evaluating the Impact of Missing Data Imputation
119
PRIMe: A Web Site That Assembles Tools for Metabolomics and Transcriptomics
120
The metabolomics standards initiative (MSI)
121
Development of a database of gas chromatographic retention properties of organic compounds.
122
LMSD: LIPID MAPS structure database
123
Centering, scaling, and transformations: improving the biological information content of metabolomics data
124
Learning a complex metabolomic dataset using random forests and support vector machines
125
Metabolomics by numbers: acquiring and understanding global metabolite data.
126
Methods for reliability and uncertainty assessment and for applicability evaluations of classification- and regression-based QSARs.
127
Decision Forest: Combining the Predictions of Multiple Independent Decision Tree Models
128
Knowledge-based analysis of microarray gene expression data by using support vector machines.
129
Genetic programming: a novel method for the quantitative analysis of pyrolysis mass spectral data.
130
No free lunch theorems for optimization
131
Feed-forward artificial neural networks : applications to spectroscopy
132
Pathway Activity Analysis and Metabolite Annotation for Untargeted Metabolomics using Probabilistic Modeling
133
Multi-omics factorization illustrates the added value of deep learning approaches
134
Metabolomics: State-of-the-Art Technologies and Applications on Drosophila melanogaster.
135
A multi-omic approach to elucidate low-dose effects of xenobiotics in zebrafish (Danio rerio) larvae.
136
Deep Learning with Python; Manning: Shelter Island, NY, USA, 2017
137
iSCHRUNK--In Silico Approach to Characterization and Reduction of Uncertainty in the Kinetic Models of Genome-scale Metabolic Networks.
138
Reflections on univariate and multivariate analysis of metabolomics data
139
General Morphological Analysis (GMA)
140
GlobalANCOVA: exploration and assessment of gene group effects
141
Mass spectrometry-based metabolomics.
142
MSnet: A Neural Network which Classifies Mass Spectra