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1 ewpoints and leveraging recent advances from machine learning.
2 n using a hybrid method of deep learning and machine learning.
3 r's disease, have also been identified using machine learning.
4  as well as opportunities and challenges for machine learning.
5 learn) for file handling, visualization, and machine learning.
6  collects >2000 behavioral features based on machine learning.
7  of MeONP-induced inflammatory potential via machine learning.
8                                              Machine learning, a subfield of artificial intelligence,
9    Subclonal reconstruction methods based on machine learning aim to separate those subpopulations in
10  a comprehensive prediction model applying a machine learning algorithm allowing selection of the mos
11 cross disparate sources using an integrative machine learning algorithm and optimization-based featur
12 CH4) could be explained by the random forest machine learning algorithm and traditional linear regres
13                                          The machine learning algorithm classified with 81% overall a
14 ionally, we focused on the results using the machine learning algorithm in the context of multi-locus
15 d estimation (TMLE) paired with the ensemble machine learning algorithm Super Learner, and compared t
16      In this study, a commercially available machine learning algorithm that flags abnormal noncontra
17         A recently developed semi-supervised machine learning algorithm was used to delineate neuroco
18  This work presents a system equipped with a machine learning algorithm, capable of continuously moni
19 es and optimising a multivariate statistical machine learning algorithm.
20 he literature and used to train a supervised machine-learning algorithm utilizing boosting, achieving
21 he correction from first principles for each machine-learning algorithm, we observe that there is typ
22                      In this study, by using machine learning algorithms and the functional connectio
23 wever, once a dataset is sufficiently large, machine learning algorithms approximate the true underly
24                                              Machine learning algorithms are then typically employed
25 ddress concerns regarding the use of complex machine learning algorithms in the clinic, for each pati
26  of this work is to evaluate the efficacy of machine learning algorithms to cluster the patients into
27                  In these settings, we adopt machine learning algorithms to investigate the extent to
28 T cell epitope prediction tools are based on machine learning algorithms trained on MHC binding or na
29                                              Machine learning algorithms trained to predict the regul
30     In addition, the performance of multiple machine learning algorithms was evaluated by comparing i
31                                     Multiple machine learning algorithms were applied to predict assa
32                                              Machine learning algorithms were developed to identify a
33                          In conjunction with machine learning algorithms, scRCAT-seq demarcates RNA t
34 evalent with advances in data collection and machine learning algorithms.
35 ngevity or anti-longevity using a variety of machine learning algorithms.
36 the security and transparency risks posed by machine learning algorithms.
37        This was more evident for some of the machine learning algorithms.
38 stoniaNet significantly outperformed shallow machine-learning algorithms in benchmark comparisons, sh
39 ogether with HLA-binding properties by using machine-learning algorithms may increase the prediction
40 e into a training and a testing set and used machine-learning algorithms to classify participants bas
41 ition (ASR) systems, which use sophisticated machine-learning algorithms to convert spoken language t
42   The survival hazard ratio was presented by machine-learning algorithms using survival statistics an
43                                              Machine learning analysis demonstrates that baseline pla
44 optogenetics, in vivo electrophysiology, and machine learning analysis, we find that a subset of neur
45                                  Advances in machine learning and contactless sensors have given rise
46 ing ranking (learning to rank) is a class of machine learning and deep learning algorithms that perfo
47 ough the use of nonlinear kernel methods for machine learning and dimension reduction of high-dimensi
48                              Applications of machine learning and graph theory techniques to neurosci
49                                              Machine learning and high-throughput computational scree
50                Here, we use a combination of machine learning and massively parallel computing to pre
51   Previously, we developed a model that used machine learning and natural language processing of text
52 eatures governing stability using supervised machine learning and Shapley values.
53 vent of modern technologies and coupled with machine learning and wireless communication, represent t
54 les simulation, high throughput computation, machine learning, and artificial intelligence work colle
55  incorporating behavioral data, unsupervised machine learning, and network analysis to identify epige
56 g and expanding on principles of statistics, machine learning, and scientific inquiry, we propose the
57 ur results merge insights from neuroanatomy, machine learning, and theoretical neuroscience to sugges
58 tudied using multiscale mechanistic docking, machine learning, and X-ray crystallography, pointing th
59 sing a novel combination of computer-vision, machine-learning, and time-series analyses.
60 For each area, early instances of successful machine learning applications are discussed, as well as
61                                              Machine learning applied to features manually extracted
62   We sought to assess the utility of a novel machine learning approach for quantifying 3-dimensional
63                                      A novel machine learning approach generated severity estimates t
64                                 We develop a machine learning approach that takes only the stoichiome
65                        We further employed a machine learning approach to identify novel associations
66  a large ovarian tumour cohort and develop a machine learning approach to molecularly classify and ch
67       In this study, we have developed a new machine learning approach to predict candidate lncRNAs a
68 he specificity for LASSO was 41% and for the machine learning approach was 62%.
69 90%, the precision for LASSO was 65% and the machine learning approach was 74%, while the specificity
70                              Sequentially, a machine learning approach was applied to identify the to
71                                      Using a machine learning approach, we built gene expression-base
72                         Here, we developed a machine-learning approach to identify small molecules th
73                 Here, we introduce a bespoke machine-learning approach, hierarchical statistical mech
74                                      Using a machine-learning approach, we compute and validate trans
75                                     Taking a machine-learning approach, we predict personality at bro
76 termixed tactile and thermal stimuli using a machine-learning approach.
77 view may serve to further the development of machine learning approaches for this important use case.
78                                              Machine learning approaches promise to accelerate and im
79                                     We apply machine learning approaches to a comprehensive vascular
80                            However, existing machine learning approaches to diagnosis are purely asso
81         Therefore, we have applied different machine learning approaches to generate models for predi
82                                              Machine learning approaches to modeling of epidemiologic
83 nd how new discovery may be advanced through machine learning approaches.
84 ems theories, including network analysis and machine learning, are well placed for analysing these da
85  pathology, gastroenterology, and cardiology machine learning articles published in 2015-2019.
86  a large-scale case study for sequence-based machine learning, as we demonstrate by experimentally co
87 lysis Pipeline using Statistical testing and Machine Learning (ASAP-SML), to identify features that d
88 extracellular vesicle (EV) therapy, and (iv) machine learning-assisted therapy.
89                                      Here, a machine-learning-assisted composition space approach was
90 lly, we provide a very efficient, robust and machine-learning-assisted method for mapping the user-re
91 d fluid features were extracted using an OCT machine-learning augmented segmentation platform.
92                                              Machine learning augments burn sepsis prediction.
93 e paediatric early warning (PEW) score and a machine learning automated approach: a Real-time Adaptiv
94                     DDAP is so far the first machine learning based algorithm for type I PKS DD affin
95 s, together with a "logical" statistical and machine learning-based approach, identified a number of
96                        Our data suggest that machine learning-based automatic quantification offers a
97 attributes were subsequently integrated with machine learning-based framework to identify the probabi
98          The highest-performing model used a machine learning-based genetic algorithm, with an overal
99 from moldy and no homes were used to train a machine learning-based model to classify the mold status
100    In response, we employed high-performance machine learning-based NER tools for concept recognition
101                          This study compares machine learning-based prediction models (i.e. Glmnet, R
102 icine paid a particular attention to develop machine learning-based techniques for the detection and
103 ature Biotechnology describe two independent machine-learning-based algorithms that demonstrate impro
104                                 We performed machine-learning-based analyses on functional magnetic r
105 ed study, the UK Biobank, using an automated machine-learning-based analysis pipeline.
106 ve geometry-based, one energy-based, and one machine-learning-based methods: Surfnet, Ghecom, LIGSITE
107  sensory neuron differentiation, integrating machine-learning-based quantification of arbor patternin
108               In this Review, we discuss how machine learning can aid early diagnosis and interpretat
109 entation, radiomics features extraction, and machine learning can be used in a pipeline to automatica
110 es and perform ensemble simulations, and how machine learning can be used in conjunction with Medusa
111                                              Machine learning can be used to improve surgical risk pr
112                These efforts demonstrate how machine learning can be used to predict AR-mediated bioa
113 havioral rhythm sensing with smartphones and machine learning can help better understand and predict
114       Instead, novel tools from the field of machine learning can potentially solve some of our chall
115                              On the basis of machine learning, CEFCIG reveals unique histone codes fo
116                                     Finally, machine learning classification algorithms applied to gr
117 ain nuclear magnetic resonance (TD-NMR), and machine learning classification models (ML) for monitori
118       Furthermore, a strong metabolite-based machine-learning classifier was able to successfully pre
119 lectance spectroscopy, and LIBS coupled with machine learning classifiers can be used to identify bot
120                                      Current machine learning classifiers have successfully been appl
121  efficiently processed by linear regularized machine learning classifiers.
122 rved in aged cells, and we develop effective machine-learning classifiers for cell age.
123                          Transcriptome-based machine-learning classifiers revealed that half of the m
124  structure of themodel used is set purely by machine learning considerations with little consideratio
125 efforts on both sensor device innovation and machine learning data analytics, this paper shows that t
126                                              Machine learning-driven, physics-based simulations provi
127            Here, we present expert-augmented machine learning (EAML), an automated method that guides
128  2000 combinations with less than 10 mg, and machine-learning-enabled autonomous experimentation iden
129                                              Machine learning feature selection methods are needed to
130 ating respondent-driven sampling weights and machine learning feature selection were used to identify
131 a when the scores they generated are used as machine learning features. MASS outperforms almost all o
132  well-known feature ranking methods from the machine learning field and five high-dimensional dataset
133  also use classification algorithms from the machine-learning field.
134 cribe tricks and problems when using them in machine learning for excited states of molecules.
135                                   The use of machine learning for multivariate spectroscopic data ana
136 cure wireless data transfer electronics, and machine learning for predictive data analysis.
137                                      We used machine learning for processing laboratory findings of 1
138  topological data analysis and interpretable machine learning for quantifying both agent-level featur
139                     We propose an innovative machine learning framework combining multiple holdouts a
140 erence that naturally fits into the standard machine-learning framework where the data are divided in
141  sequence context and biological effect in a machine-learning framework.
142 arch in finding more effective ways to adopt machine learning frameworks in achieving robust performa
143 imized using feature selection algorithm and machine learning, from which the accuracy of detection o
144                 To address these challenges, machine learning has been broadly applied to analyze mul
145                                     Although machine learning has enabled unbiased analysis of behavi
146 t, we review how the different approaches of machine learning have been applied to porous materials.
147                This large-scale project used machine learning (i.e., Random Forests) to 1) quantify t
148                                              Machine learning identified different cognitive profiles
149  Here we argue that the recent resurgence of Machine Learning in combination with the availability of
150 iew, we examine the literature pertaining to machine learning in hepatology and liver transplant medi
151                   The latest developments in machine learning (including deep learning) provides a gr
152 e advances in computational neuroscience and machine learning into improved outcomes for patients suf
153                                              Machine learning is a branch of computer science and sta
154                                              Machine learning is a powerful tool for creating computa
155 or accelerated MR image reconstruction using machine learning is presented.
156                                              Machine learning is processed by dividing the dataset in
157   In this paper, we present a method, termed machine-learning iterative calculation of entropy (MICE)
158                                          The machine learning medial prefrontal cortex-posteromedial
159 the availability of a more accurate and fast machine learning method for the identification of circul
160 echanism for dynamic data analysis and using machine learning method predicts the basic reproduction
161                 Here, we present Ens-Grad, a machine learning method that can design complementarity
162                           Here, we present a machine-learning method comparing projected typhoon trac
163 ances and biological interpretation across 8 machine learning methods and 4 different types of metage
164                                   Given that machine learning methods applied to neurological signals
165 data to assign a bioactivity score, Bayesian machine learning methods can be used for prospective pre
166                                     Bayesian machine learning methods can be used for prospective pre
167 found minimal evidence that state-of-the-art machine learning methods can forecast the occurrence of
168                          Standard supervised machine learning methods enabled development of discrimi
169 aluating multivariate statistical models and machine learning methods for the classification of 6 typ
170                                      Various machine learning methods have been proposed, including a
171         To this end, several statistical and machine learning methods have been proposed.
172                                       Modern machine learning methods may be used to probe relationsh
173 ity functional theory (DFT) calculations and machine learning methods to determine their magnetic pro
174          Among other advances, deep-learning machine learning methods, including convolutional neural
175 perspectral Imaging (NIR-HSI), together with machine learning methods, is valuable to improve the eff
176 cts the performance and outcomes of chemical machine learning methods.
177  ancestral recombination graph inference and machine-learning methods for the prediction of selective
178 ucture prediction enables the development of machine-learning methods to predict the likely biologica
179      We are not aware of the applications of machine learning (ML) algorithms beyond ANN to FCH(4) da
180                                  Advances in machine learning (ML) and artificial intelligence (AI) p
181 ascular aging (HVA) based on two approaches: machine learning (ML) and deep learning (DL).
182 t this choice, we evaluated well-established machine learning (ML) classifiers including random fores
183 (PL), to create silver standard for training machine learning (ML) for disease classification.
184                         CCS prediction using machine learning (ML) has recently shown promise in the
185                                       Use of machine learning (ML) in clinical research is growing st
186                              In this effort, machine learning (ML) is applied in a systematic manner
187 op experimentation combined with advances in machine learning (ML) is uniquely suited for high-throug
188                                              Machine learning (ML) may guide interventions to reduce
189                               Application of machine learning (ML) methods for the determination of t
190                                              Machine learning (ML) provides powerful dimensionality r
191                                              Machine learning (ML) utilizes artificial intelligence t
192                                          The machine learning model group selected for further studie
193       In the external validation cohort, the machine learning model identified patients who met the c
194 chemical shift calculation protocols using a machine learning model in conjunction with standard DFT
195                                          The machine learning model pretrained on Fourier spectrum fe
196                                          The machine learning model that considered both radiomic and
197 iners as most probative, to build a standard machine learning model that predicts (based on covariate
198                            We have trained a machine learning model to analyze the correlation betwee
199                             We present a new machine learning model to distinguish AVPs from non-AVPs
200                               We developed a machine learning model to identify patients at risk for
201                                            A machine learning model trained on VirScan data predicted
202                           In conclusion, our machine learning model was able to identify EGFR-mutant
203                                          The machine learning model was then adapted to predict the D
204 odel significantly outperforms a traditional machine learning model, as well as accurately produces s
205 0 micrograms per liter using a random forest machine-learning model based on 11 geospatial environmen
206                                The developed machine-learning model shows good predictability and agr
207                                The resulting machine learning models and segregation database are key
208                    Overall, regression-based machine learning models are efficient techniques for map
209 henotypes can be accurately identified using machine learning models based on readily available clini
210 tility of the complete feature set, we train machine learning models for health state-prediction in 3
211 g both genetic and non-genetic factors, four machine learning models have close prediction results fo
212                                              Machine learning models have the potential to address th
213 -quality data is critical for the success of machine learning models in the era of big data.
214  Here, we highlight specific achievements of machine learning models in the field of computational ch
215 st" methods might improve the performance of machine learning models on radiomics images and increase
216 mbeddings, BioConceptVec, via four different machine learning models on ~30 million PubMed abstracts.
217 tely than previous methods, and we show that machine learning models that exploit this representation
218                          We aimed to develop machine learning models to accurately predict bronchioli
219          The authors used functional MRI and machine learning models to address individual variabilit
220 ights the power of combining mechanistic and machine learning models to effectively direct metabolic
221                                 We used four machine learning models to produce flood susceptibility
222                                        Using machine learning models trained on data from the simulat
223                                              Machine learning models using transporter gene frequenci
224 n, the generation and evaluation of multiple machine learning models utilizing different sources of a
225                                              Machine learning models utilizing volatile organic compo
226 ovides a walkthrough for creating supervised machine learning models with current examples from the l
227              The training performance of all machine learning models, including six other algorithms,
228                                          Two machine learning models, one exclusively trained on VF d
229  of vector representations of concepts using machine learning models-have been employed to capture th
230  then fed the selected variables to multiple machine learning models.
231 eepHE significantly outperforms the compared machine learning models.
232 response is needed to support future work of machine learning models.
233 comes predicted with arbitrarily complicated machine-learning models including random forests and dee
234 eature selection can improve the accuracy of machine-learning models, but appropriate steps must be t
235  build more interpretable neuroimaging-based machine-learning models, contributing to the cumulative
236                                Combined with machine learning, morphometric markers form intuitive vi
237 This letter is devoted to the application of machine learning, namely, convolutional neural networks
238                     We explored unsupervised machine learning of ECG waveforms to identify CRT subgro
239                                              Machine learning of new parameterizations from high-reso
240 ificity~90-93% through the sparse regression machine learning of patterns.
241                             Here, we conduct machine learning of serum metabolic patterns to detect e
242       All-printed electronics, incorporating machine learning, offers multi-class and versatile human
243                       Using a combination of machine learning, optical character recognition, and man
244 ich was 19.1% (or 5.3%) higher than the best machine learning (or threading)-based method.
245                  In this study, we present a machine learning pipeline for rapid, accurate, and sensi
246 escriptors, and also by demonstrating that a machine-learning potential trained on liquid water alone
247 h of electronic medical records coupled with machine learning presents an opportunity to improve the
248                                          The machine learning produced highly accurate and robust cla
249               When these challenges are met, machine learning promises a future of rigorous, outcomes
250                                              Machine learning promises to revolutionize clinical deci
251 erein Raman spectroscopy in combination with machine learning provides the first glimmer of hope for
252                                              Machine learning ranking (learning to rank) is a class o
253 n UKBiobank brain images against established machine learning references.
254 nd retinal morphology) using correlation and machine learning regression.
255 pEF, and a multimarker approach coupled with machine-learning represents a promising strategy for enh
256 utional deep neural networks, the supervised machine learning scheme achieved over 76.25% accuracy in
257                                              Machine learning scoring functions for protein-ligand bi
258  also envisage the potential of applying our machine learning strategy to other diseases and purposes
259            In the largest multimodal 7 tesla machine learning study to date, we overcome this limitat
260 , the model-based strategy targeted 27%, and machine learning targeted 18%.
261  Equilibrium Feedback Assessment (SGEFA) and machine learning techniques (MLTs).
262                          Previous work using machine learning techniques suggested that ASD detection
263 In general, traditional shoreline models and machine learning techniques were able to reproduce shore
264 een analyzed, using a wide array of advanced Machine Learning techniques, to quantify how regulated r
265                      Our study suggests that machine learning techniques, when combined with rigorous
266 ss the promises and pitfalls of the involved machine learning techniques.
267  on computing correlation functions or using machine learning techniques.
268 dologies, tests for convergent evolution and machine learning techniques.
269                                              Machine-learning techniques are more and more often appl
270 C-P with Raman micro-spectroscopy (RmuS) and machine learning technology following a protocol suitabl
271  and to generate classification models using machine learning technology.
272  create density functionals using supervised machine learning, termed NeuralXC.
273  current study, we capitalise on advances in machine learning that allow continuous neural data to be
274  researchers using modeling approaches (e.g. machine learning) that can integrate these perspectives
275 hich focuses on using Raman spectroscopy and machine learning to address the need for better screenin
276 enomic and metabolomic platform that employs machine learning to automate the selective discovery and
277  uses optical superresolution microscopy and machine learning to create a quantitative and higher thr
278  simulation, high-performance computing, and machine learning to create a risk estimator to stratify
279 ons with direct long-read RNA sequencing and machine learning to detect secondary structures in cellu
280          We hypothesized that application of machine learning to electrogram frequency spectra may ac
281 his quantitative signal can be combined with machine learning to enable microscopy in diverse fields
282                                   We applied machine learning to explain how specific interactions co
283 method provides encouragement for the use of machine learning to extract meaningful structural inform
284                                Here we apply machine learning to generate a spatial embedding (multid
285      To prioritize functional sites, we used machine learning to identify 59 features indicative of p
286     Applying modern analytical tools such as machine learning to increasingly high dimensional data o
287    These results illustrate the potential of machine learning to inform nanomanufacturing processes.
288 undamentally innovative in that it also uses machine learning to perform cell tracking and lineage re
289                        Here, we used EEG and machine learning to study how the brain processes audito
290                              Finally, we use machine learning to test whether pairwise trophic intera
291 eraging the power of modern-technologies and machine-learning to this field.
292 the first application of the novel NMR-based machine learning tool "Small Molecule Accurate Recogniti
293 gitudinal progression patterns using a novel machine-learning tool called "Subtype and Stage Inferenc
294                     With the availability of machine learning tools coupled with vast data sources, t
295 e probabilistically estimated using advanced Machine Learning tools.
296 infrared (mu-FTIR) hyperspectral imaging and machine learning tools.
297     We demonstrate such kernel-based quantum machine learning using specialized multiphoton quantum o
298         Furthermore, fluorescent imaging and machine learning was used to load single K562 cells amon
299                                        Using machine learning, we extract detailed behavioral statist
300                               We developed a machine learning workflow to classify single cells accor

 
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