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1 neal posterior elevation, showed the highest discriminant ability (AUC: 0.951).
2                                          The discriminant ability of the pipeline was evaluated with
3  in PD (PD > 4 mm) and suppuration were good discriminants amongst PIM/PIMP.
4     A case-control study was performed using discriminant analyses to validate an approach using Mtb-
5                                       Linear discriminant analyses were performed to develop predicti
6 , mild MPP group and control group in linear discriminant analyses.
7                    Results demonstrated that Discriminant Analysis (DA) and Correlated Component Regr
8 ndent modelling of class analogy (SIMCA) and discriminant analysis (DA) based on MIR and NIR spectra
9                                              Discriminant Analysis (DA) led to similar (conventional/
10                                              Discriminant Analysis (DA) was successful for botanical
11  density, were processed using multivariate, discriminant analysis (DA), principal component analysis
12 the year, season and production region using discriminant analysis (DA).
13 d algorithm, expectation-maximization sparse discriminant analysis (EM-SDA), produces a sparse LDA mo
14   The accuracies of GLM, SVM, and functional discriminant analysis (FDA) models indicate that SVM is
15 e developed a novel method based on Fisher's Discriminant Analysis (FDA) to identify gene expression
16 spectral data; genetic algorithm with linear discriminant analysis (GA-LDA) achieved the best diagnos
17 results obtained by Genetic Algorithm Linear Discriminant Analysis (GA-LDA) were the most satisfactor
18 ined using the genetic algorithm with linear discriminant analysis (GA-LDA).
19 etic algorithms-partial least-squares-linear discriminant analysis (GA-PLS-LDA).
20 hine classification and Linear and Quadratic Discriminant Analysis (LDA and QDA, respectively).
21  and class modelling methods by using linear discriminant analysis (LDA) and soft independent model c
22 The authentication issue was faced by Linear Discriminant Analysis (LDA) and Soft Independent Modelli
23 nd computational approaches including linear discriminant analysis (LDA) and sparse canonical correla
24 s an unsupervised learning method and Linear Discriminant Analysis (LDA) as a supervised learning met
25                       Moreover, using Linear Discriminant Analysis (LDA) coupled with effect size mea
26                        In this study, Linear Discriminant Analysis (LDA) is applied to investigate th
27 rincipal component analysis (PCA) and linear discriminant analysis (LDA) is proposed for the authenti
28 mong the multivariate analysis tools, linear discriminant analysis (LDA) of fruit multi elemental fin
29 rincipal component analysis (PCA) and linear discriminant analysis (LDA) showed better results consid
30  of FT-NIR spectroscopy combined with Linear Discriminant Analysis (LDA) to discriminate chickpea see
31 ential forward selection coupled with linear discriminant analysis (LDA) was the best strategy to sel
32   A machine-learning algorithm called linear discriminant analysis (LDA) was trained by using the lar
33               Raman spectroscopy with linear discriminant analysis (LDA) was used to identify changes
34 rincipal component analysis (PCA) and linear discriminant analysis (LDA) were performed.
35 tern recognition methods were tested: linear discriminant analysis (LDA) with variable selection by s
36 type Discovery and Classification and linear discriminant analysis (LDA)) are tested on six mass cyto
37 rincipal component analysis (PCA) and linear discriminant analysis (LDA), an identification model pro
38 attern recognition techniques such as linear discriminant analysis (LDA), partial least square discri
39 d with discriminant analysis, such as Linear Discriminant Analysis (LDA), Quadratic Discriminant Anal
40                        In this paper, Linear Discriminant Analysis (LDA), Quadratic Discriminant Anal
41 , principal component analysis (PCA), linear discriminant analysis (LDA), support vector machines (SV
42 rincipal component analysis (PCA) and linear discriminant analysis (LDA), were used to differentiate
43 ochastic neighbor embedding (tSNE) or linear discriminant analysis (LDA).
44 y classification models, specifically linear discriminant analysis (LDA).
45 omponent analysis (PCA) followed by a linear discriminant analysis (LDA).
46  of ecological character states using linear discriminant analysis (LDA).
47 -weighted multiblock partial least squares - discriminant analysis (MB-PLS1-DA) models were compared
48 lling using Orthogonal Partial Least Squares-Discriminant Analysis (OPLS-DA) of metabolomic data read
49          An orthogonal partial least squares discriminant analysis (OPLS-DA) score plot revealed good
50  Orthogonal Projections to Latent Structures Discriminant Analysis (OPLS-DA) showed clear group disti
51 ) followed by orthogonal partial last square-discriminant analysis (OPLS-DA) to develop classifiers a
52  Orthogonal projections to latent structures-discriminant analysis (OPLS-DA) was applied successfully
53 s (PCA) and orthogonal partial least squares discriminant analysis (OPLS-DA) were applied to characte
54 ysis (PCA), orthogonal partial least squares discriminant analysis (OPLS-DA), and hierarchical cluste
55        Using orthogonal partial last-squares discriminant analysis (OPLS-DA), multivariate models wer
56 d Orthogonal Projection to Latent Structures Discriminant Analysis (OPLS-DA).
57  as well as Orthogonal Partial Least Squares Discriminant Analysis (OPLS-DA).
58 ysis (PLS-DA) and Principal Component-Linear Discriminant Analysis (PC-LDA) classification models wer
59                  Principal components linear discriminant analysis (PC-LDA) of acquired RS-spectra co
60 ncipal Component Analysis followed by Linear Discriminant Analysis (PCA-LDA) and Partial Least Square
61 ncipal component analysis followed by linear discriminant analysis (PCA-LDA) was used for the multiva
62 ns using principal component analysis linear discriminant analysis (PCA-LDA).
63 and principal component analysis with linear discriminant analysis (PCA-LDA).
64 region of 4000-5000 cm(-1), piecewise linear discriminant analysis (PLDA) is used to classify spectra
65 sion 7.2 software) and partial least squares-discriminant analysis (PLS-DA) (Matlab R2017b) were used
66        Furthermore, the partial least square discriminant analysis (PLS-DA) achieved an effective cla
67    On the basis of the partial least-squares-discriminant analysis (PLS-DA) and ANOVA-simultaneous co
68 ur algorithm, based on partial least squares-discriminant analysis (PLS-DA) and cross-validation by b
69 ierarchical clustering, Partial-least square discriminant analysis (PLS-DA) and Ingenuity pathway ana
70 odels were developed by Partial Least Square-Discriminant Analysis (PLS-DA) and internally validated
71 opy in combination with Partial Least Square Discriminant Analysis (PLS-DA) and Partial Least Square
72                        Partial-Least Squares-Discriminant Analysis (PLS-DA) and Principal Component-L
73                        Partial least squares discriminant analysis (PLS-DA) and soft independent mode
74                        Partial least squares discriminant analysis (PLS-DA) and soft independent mode
75 rediction errors using partial least squares discriminant analysis (PLS-DA) discrimination models for
76 s (PCA) and supervised partial least squares-discriminant analysis (PLS-DA) from liquid chromatograph
77                        Partial Least Squares-Discriminant Analysis (PLS-DA) identified variables to d
78                        Partial least-squares discriminant analysis (PLS-DA) indicated that both metho
79                         Partial least square-discriminant analysis (PLS-DA) indicated that seeds from
80                        Partial Least-Squares Discriminant Analysis (PLS-DA) is a popular machine lear
81                    The partial least-squares discriminant analysis (PLS-DA) model built to discrimina
82            Object-wise partial least squares discriminant analysis (PLS-DA) models were developed and
83         Four different partial least squares discriminant analysis (PLS-DA) models were fitted to the
84  recognition analysis, partial-least-squares discriminant analysis (PLS-DA) of images, to develop a r
85                        Partial Least Squares-Discriminant Analysis (PLS-DA) of metabolomes of individ
86                        Partial least squares discriminant analysis (PLS-DA) showed clear discriminati
87                  Using partial least-squares discriminant analysis (PLS-DA) to compare results betwee
88 troscopy combined with Partial Least Squares Discriminant Analysis (PLS-DA) to discriminate the origi
89  overall structure, and partial least square discriminant analysis (PLS-DA) was carried out for the a
90                  Next, partial least squares-discriminant analysis (PLS-DA) was developed to detect f
91 Analysis (PCA-LDA) and Partial Least Squares-Discriminant Analysis (PLS-DA) were applied to the NMR d
92 ent analysis (PCA) and partial least squares discriminant analysis (PLS-DA) were employed to investig
93 ent analysis (PCA) and partial least squares discriminant analysis (PLS-DA) were evaluated.
94                        Partial least-squared discriminant analysis (PLS-DA) with double leave-one-pat
95 ts were obtained for partial least squares - discriminant analysis (PLS-DA), allowing a good discrimi
96 iminant analysis (LDA), partial least square discriminant analysis (PLS-DA), k-nearest neighbors (k-N
97 ecognition techniques, Partial Least Squares Discriminant Analysis (PLS-DA), Soft Independent Modelin
98 rest neighbours (kNN), partial least squared-discriminant analysis (PLS-DA), support vector machine c
99 ent analysis (PCA) and partial least squares discriminant analysis (PLS-DA), the purees may be alloca
100 ogistic regression and partial least squares-discriminant analysis (PLS-DA), while group lasso explor
101 ass analogy (SIMCA) and partial least square discriminant analysis (PLS-DA).
102 ic algorithm (GA); and partial least squares discriminant analysis (PLS-DA).
103 ed classification with Partial Least Squares Discriminant Analysis (PLS-DA).
104 fied and submitted to a Partial-Least Square Discriminant Analysis (PLS-DA).
105 copy combined with partial least squares for discriminant analysis (PLS-DA).
106 nt analysis (PCA), and partial least squares-discriminant analysis (PLS-DA).
107 s combined, the partial least squares-linear discriminant analysis (PLS-LDA) model resulted in 75% an
108 was obtained using the partial least squares discriminant analysis (PLSDA) algorithm.
109 ent analysis (PCA) and partial least-squares discriminant analysis (PLSDA), were performed on the MS
110 inear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA) and Support Vector Machines
111 inear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA) and Support Vector Machines
112 ML algorithm, an implementation of quadratic discriminant analysis (QDA) written in MATLAB.
113 nearest shrunken centroids (NSCs) and sparse discriminant analysis (SDA) with k-nearest neighbors for
114                              Stepwise Linear Discriminant Analysis (SLDA) showed that a reduced numbe
115 ve projections algorithm coupled with linear discriminant analysis (SPA-LDA) classified correctly all
116  regression (sSVR) for calibration, and sPLS-discriminant analysis (sPLS-DA) and support vector class
117  system (FuRES), super partial least-squares-discriminant analysis (sPLS-DA), and support vector mach
118  was achieved by super partial least-squares discriminant analysis (sPLS-DA), support vector machine
119   PERMANOVA and sparse partial least squares discriminant analysis (sPLSDA) demonstrated that subject
120                    Extreme gradient boosting discriminant analysis (XGBDA) was examined among other m
121 ed diagnostic groups (multiblock barycentric discriminant analysis [MUBADA]) was used.
122 cation of origin (Karoo vs. Non-Karoo) using discriminant analysis allowed 95% and 90% correct classi
123                          Furthermore, linear discriminant analysis allowed achieving sensitivities gr
124 e plots and orthogonal partial least squares discriminant analysis also showed significant difference
125                        Partial least squares-discriminant analysis also showed that these markers wer
126 ction of food frauds were analyzed employing discriminant analysis and a one-class classifier.
127            Partial Least Squares regression, Discriminant Analysis and Artificial Neural Networks wer
128        Multivariate classification comprises discriminant analysis and class-modeling techniques wher
129 cipal component analysis coupled with linear discriminant analysis and classification models demonstr
130 ombination of principal component and linear discriminant analysis and least absolute shrinkage and s
131 ted by linear Support Vector Machine, Linear Discriminant Analysis and Naive Bayesian classifiers acr
132 cipal component analysis coupled with linear discriminant analysis and predictive classifiers were ap
133 metric techniques like partial least squares discriminant analysis and variable identification (PLS-D
134                    On the other hand, linear discriminant analysis based on 8 selected absorbance val
135 discrimination models were created by linear discriminant analysis based on principal component analy
136      Including all studied regions and using discriminant analysis between PSP and PD, 100% sensitivi
137 oss-validation was employed to test a Linear Discriminant Analysis classifier based upon the RT-qPCR-
138                                            A discriminant analysis correctly classified 96.7% of the
139 thin palmitate and total carotenoid content, discriminant analysis correctly classified all samples a
140                                         Yet, discriminant analysis did not adequately distinguish the
141                                       Linear discriminant analysis distinguished facial change determ
142 uation logistic regression models and linear discriminant analysis effect size (LEfSe) algorithm to i
143 nt of CDI were identified by means of linear discriminant analysis effect size analysis and then furt
144                                       Fisher Discriminant Analysis enables multivariate classificatio
145 ror, 2.03-12.48%) were acquired by nonlinear discriminant analysis for CRC, IBD and NTC, regardless o
146 lysis using orthogonal partial least squares discriminant analysis for metabolomics.
147 SOM-RPM can be further analyzed using linear discriminant analysis for the validation and characteriz
148                        Partial least squares discriminant analysis identified a signature of 54 basel
149 rometry performed, with partial least square discriminant analysis integrating clinical, microbiome,
150 nsform micro-Raman spectroscopy coupled with Discriminant Analysis is here presented.
151                              Fisher's linear discriminant analysis method was employed to classify aw
152 d anatomy ontology terms, employing Fisher's Discriminant Analysis methods to identify previously unk
153 e features were used as input to a quadratic discriminant analysis ML classifier, which was trained,
154                                     A Linear Discriminant Analysis model based on the abundance of 12
155 on of the groups in the partial least square-discriminant analysis model was based, demonstrated the
156                        Partial Least Squares-Discriminant Analysis modelling of fused PCA scores of t
157 ak volume ratios were used to develop linear discriminant analysis models able to distinguish olive l
158 r data exploration and partial least squares discriminant analysis models for the differences between
159                   Three partial least square-discriminant analysis models were developed in order to
160 urements obtained from partial least-squares discriminant analysis models.
161  applying the tested Partial Least Squares - Discriminant Analysis multiclass model (85 fillets) to t
162 a(13)C values, apatite-collagen spacing, and discriminant analysis of delta(13)C(coll), delta(13)C(ca
163                                          The Discriminant Analysis of MultiAspect CYtometry (DAMACY)
164                                              Discriminant analysis of principal components (DAPC) rev
165  = 0.65), Bayesian analysis in STRUCTURE and discriminant analysis of principal components (DAPC) sho
166  also reflected in both network analyses and discriminant analysis of principal components.
167                        Partial least squares-discriminant analysis of the MS/MS(ALL) lipidomic datase
168                                       Linear discriminant analysis on the physicochemical parameters
169 turbations [orthogonal partial least-squares discriminant analysis Q(2)(Y) of 0.728] in the fecal lip
170 omparison of locomotor kinematics and linear discriminant analysis reveal a surprisingly similar patt
171                         Partial least square-discriminant analysis revealed metabolite profiles that
172                                              Discriminant analysis revealed that for each grape culti
173                        Partial least squares-discriminant analysis showed that the 30 most important
174                    Further, a VOI derived by discriminant analysis that maximally separated diagnosti
175 orthogonal) projections to latent structures-discriminant analysis to characterise and differentiate
176 itudinal abundance of metabolites; 4) linear discriminant analysis to evaluate robustness in a second
177 e developed a novel method based on Fisher's Discriminant Analysis to identify gene expression weight
178 e conducted orthogonal partial least-squares discriminant analysis to identify metabolites that discr
179                    The application of linear discriminant analysis to our overall results demonstrate
180                                    Moreover, discriminant analysis using ASD subdomains distinguished
181 dministration and the multivariate canonical discriminant analysis was able to distinguish between tr
182                        Partial least squares discriminant analysis was applied to the spectral datase
183                                   The linear discriminant analysis was conducted in order to classify
184                   Then partial least-squares-discriminant analysis was conducted to investigate the b
185  an exploratory assessment relying on Linear Discriminant Analysis was performed.
186                                              Discriminant analysis was successfully discriminated the
187             Orthogonal partial least squares discriminant analysis was used to build models separatin
188 f criteria for AMR and partial least squares discriminant analysis was used to identify associated ch
189 IR in combination with Partial Least Squares-Discriminant Analysis we were able to discriminate infec
190 ntensity variations, principal component and discriminant analysis were performed to discriminate the
191 ipal component analysis, factor analysis and discriminant analysis were used for the statistical eval
192    The aging type could be defined by linear discriminant analysis with an accuracy of 95%.
193  differentiation models were built by linear discriminant analysis with the percentage of correct cla
194                              The LDA (linear discriminant analysis) model showed that the FAMEs conte
195 nalysis (principal component analysis-linear discriminant analysis), this method was successfully app
196 e fingerprints (Q(2) of 0.784 for supervised discriminant analysis).
197 ponent analysis (PCA), partial least squares-discriminant analysis, analysis of variance, and random
198 ysis (PARAFAC), PARAFAC supervised by linear discriminant analysis, and discriminant unfolded partial
199                  Partial least squared (PLS)-discriminant analysis, and PLS-regression models were as
200  significance testing, partial least squares discriminant analysis, and receiver operating characteri
201 were analyzed by using partial least-squares discriminant analysis, and the results were validated wi
202 ombination of dimension reduction and linear discriminant analysis, CARS (AUC = 0.93) and TPEF (AUC =
203                                       Linear Discriminant Analysis, coupled with Successive Projectio
204 ed, via thermophoretic enrichment and linear discriminant analysis, for cancer detection and classifi
205 tric supervised method (partial least square discriminant analysis, PLS-DA) was developed and applied
206 ent analysis, PCA, and partial least squares discriminant analysis, PLS-DA) were applied to deconvolu
207 feature selection algorithms associated with discriminant analysis, such as Linear Discriminant Analy
208                                           In discriminant analysis, these baseline factors identified
209         The best results were obtained using Discriminant Analysis, with 95% correct re-classificatio
210                                 Using linear discriminant analysis, XRF-based multi-elements with and
211  was the best predictor of reentry in linear discriminant analysis.
212 erve as keystone taxa as revealed our linear discriminant analysis.
213  samples were correctly classified by linear discriminant analysis.
214 ear support vector machine and kernel Fisher discriminant analysis.
215 cluding the t-test and partial least squares discriminant analysis.
216 ogistic regression and partial least squares discriminant analysis.
217 e statistical technique Partial Least Square-Discriminant Analysis.
218 antly associated with GBS carriage by linear discriminant analysis.
219 tatistical technique of partial least square discriminant analysis.
220 ividual indices were built using linear step discriminant analysis.
221 -test, fold changes and partial least square discriminant analysis.
222 ns to latent structures (OPLS) and OPLS with discriminant analysis].
223 stems using a 10-fold cross-validated linear-discriminant-analysis using Fourier-transform infrared s
224               All quantitative analyses (eg, discriminant and convergent validity correlations, known
225  PLS-DA-VID, SOM-EFS proved more effectively discriminant and improved the median five-fold cross-val
226 scolarctobacterium were also selected in the discriminant and linear regression analyses, and could b
227                       Combining individually discriminant and synergic genes can improve the predicti
228  support vector machines, traditional linear discriminant, and k-nearest neighbor statistical analyse
229                        These interplays with discriminant bacterial taxa in HT and NT subjects highli
230 d probing depth (PD) were confirmed reliable discriminants between peri-implant health and disease, w
231  and 25 bacterial taxa previously defined as discriminant biomarkers among groups.
232 ivity and specificity assessment showed high discriminant capability in the real serum sample.
233 l also be analysed as its reliability or its discriminant capacity.
234     Tenfold cross-validations using a linear discriminant classifier with predefined feature signatur
235 t flavonoids characterizing PS were the most discriminant compounds during the in vitro digestion.
236 lection (SOM-EFS) and PLS-DA-VID to identify discriminant compounds in 17 blue cheese varieties.
237                    Aged beans exhibited more discriminant compounds than fresh beans regardless of te
238                                 Three-common discriminant compounds were exclusive to each blend and
239 ation (PLS-DA-VID) may not identify the most discriminant compounds.
240 nd Libournais vineyard highlighting the most discriminant constituents.
241 tive cancer procedures, and determine if the discriminant cut-off of hospital volume may influence po
242                                     The most discriminant differences between lincRNAs and mRNAs invo
243                        By sampling along the discriminant dimension, and back-projecting into the ima
244 roteins (1,425 cm(-1)) were identified to be discriminant features.
245 holipid profiles of 117 patients were highly discriminant for esophageal adenocarcinoma both in disco
246 f BMO-MRW and pRNFL parameters with a linear discriminant function (LDF) could further enhance glauco
247 iking atrophy patterns) and the results of a discriminant function analysis that incorporated clinica
248 tive data from 384 Chinese children and used discriminant function analysis to determine the best ana
249                                              Discriminant function analysis was used to examine how a
250 rowear variables were combined into a single discriminant function analysis, the cast data and origin
251 .9 to 19.4 +/- 3.7 (P = 0.002) and Maddrey's discriminant function from 74.8 +/- 22.8 to 57.4 +/- 31
252                                          The discriminant functions classify 100% of the wines, with
253                                   Multimeric discriminant functions combined with individual indices
254                                          Two discriminant functions were generated and allowed a sati
255                               Results: Three discriminant functions were identified and defined as ma
256 ng informative genes, including individually discriminant genes and synergic genes, from expression d
257 each comparable accuracy to the individually discriminant genes using the same number of genes.
258 y a previously established model using seven discriminant genes.
259                                   Integrated discriminant improvement analysis showed that the TYM-MC
260 ercetin, and quercetin 3-O-glucuronide to be discriminant in the detection of the oxidative status of
261 al regions and spectral components that were discriminant in the different cognitive tasks.
262  uses a machine-learning approach to extract discriminant information from a broad array of features
263            We have examined the potential of discriminant inorganic constituents (trace-, ultra-trace
264                  The manganese content was a discriminant marker of Liebana PDO and El Bierzo, that c
265                                        Other discriminant metabolites included: 1-monostearin, xylono
266                                              Discriminant metabolites were considered if within the t
267                         It is shown that the discriminant method is only partially appropriate for so
268                      A partial least squares-discriminant model is first trained from 53 oil samples
269  (taken 4-14 h after wake-up time), a linear discriminant model with wrapper-based feature selection
270                                              Discriminant modelling of the spectral data successfully
271                                          The discriminant models based on E-nose dataset enable a 100
272 iscrimination properties as well as distance-discriminant neurons are revealed in the avian auditory
273 ay provide brain age estimates that are most discriminant of individuals with pathologies.
274 s, furofurans and phenolic acids as the most discriminant phenolics.
275 tra were evaluated with partial least square-discriminant (PLS-DA) and PLS to identify fat/oil origin
276 twenty-one volatile markers with the highest discriminant power for varietal differentiation.
277 ates robust representations that have strong discriminant power in distinguishing kinase substrates f
278 repeated cross-validation that optimizes its discriminant power.
279  negative predictive values and accuracy and discriminant property of the FOBS were determined and co
280                                     The most discriminant Raman modes were identified based on VIP (v
281 ature selection algorithms (namely, Fisher's discriminant ratio, Kruskal-Wallis' analysis, and Relief
282 apability of discrimination, emphasizing the discriminant role of some elements.
283                                            A discriminant score based on both indicators (D = -0.42 -
284 with an exhaustive search approach to find a discriminant set of image features, which were validated
285 s the raw time series obviating the need for discriminant statistic while accommodating multiple time
286 ng and investigates potential differences in discriminant statistics between the given empirical samp
287             The choice and estimation of the discriminant statistics can be challenging across short
288 aimed at identifying position-specific, most-discriminant thresholds in sliding windows along the seq
289 ervised by linear discriminant analysis, and discriminant unfolded partial least-squares.
290 ons through hybridisation, but morphological discriminants used for species identification are unable
291 al component score and the SF-6D showed good discriminant validity as judged by the analysis of varia
292               These findings demonstrate the discriminant validity between similar prosocial construc
293                               Convergent and discriminant validity of the PROMIS measures was support
294           The DLQI had better convergent and discriminant validity than the SF-12.
295 re for convergent validity assessment, while discriminant validity was established through the abilit
296                       1H-MRS showed adequate discriminant validity, but limited reliability and poor
297 ations with AD severity assessments and poor discriminant validity.
298 the Vancouver risk calculator yielded a high discriminant value, which supports the use of a risk cal
299 n area and species, and to identify the most discriminant VOCs.
300                              The main design discriminant was the holding temperature; increased temp

 
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