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1 ets of 2 community samples were subjected to latent class analysis.
2 ificant eating disorders were submitted to a latent class analysis.
3 rical and clinical variables not used in the latent class analysis.
4 erived on the basis of symptomatology, using latent class analysis.
5 ymptom factors; and 3) syndromes, defined by latent class analysis.
6 BSM distance) were assessed and evaluated by latent class analysis.
7 ormance was evaluated by two comparators and latent class analysis.
8 ing patterns were grouped into classes using latent class analysis.
9 nt a brief overview of the principles behind latent class analysis.
10 of distinct inflammatory subphenotypes using latent class analysis.
11            Infant growth was estimated using latent class analysis.
12  used to determine T. cruzi serostatus using latent class analysis.
13 ric hospital capability level, defined using latent class analysis.
14 f ARS was defined based on 11 symptoms using latent class analysis.
15   Subphenotype was previously assigned using latent class analysis.
16 from routinely available clinical data using latent class analysis.
17 uence over time was measured by longitudinal latent class analysis.
18 uate the existence of symptom subtypes using latent class analysis.
19 on, to identify substance use patterns using latent class analysis.
20 atterns to determine menopausal status using latent class analysis.
21 EOs across the day, were determined by using latent class analysis.
22 hort study, subtypes of AUD were assessed by latent class analysis.
23 profiles, using a specific statistical tool: Latent class analysis.
24            Patients were classified by using latent class analysis.
25 in randomized controlled trial cohorts using latent class analysis.
26          Phenotypes were determined by using latent class analysis.
27 t characteristics were also assessed using a latent class analysis.
28 yzed using random-parameter logit models and latent-class analysis.
29                                       In the latent class analysis, 3 subgroups were identified.
30                                        Using latent class analysis, 4 phenotypes of atopic dermatitis
31             Four clusters were identified by latent class analysis: 44.9% no or mild group (cluster 1
32                         The method ensembles latent class analysis, a model-based clustering method;
33 iptive, case-control, attributable fraction, latent class analysis) address some but not all challeng
34                                      We used latent class analysis and Hierarchical Bayesian modeling
35                                 We performed latent class analysis and identified five latent exposur
36                                 We then used latent class analysis and identified two subtypes of PAS
37 fined immunologic phenotypes with the use of latent class analysis and investigated their association
38  mixture modelling approaches (which include latent class analysis and latent profile analysis).
39   In this cross-sectional study, we employed latent class analysis and linear mixed-effects models to
40  different statistical approaches, including latent class analysis and self-organizing maps.
41 iation between depressive subtypes (based on latent class analysis) and biological measures.
42 y results, case-control logistic regression, latent class analysis, and attributable fraction, but ea
43                                              Latent class analysis- and spell-based phenotypes appear
44 IS-C phenotypic clusters were inferred using latent class analysis applied to the largest cohort to d
45  measures were examined using a confirmatory latent class analysis approach.
46  several categorized and continuous indices, latent class analysis based on any use of each substance
47 e (hospitalization) were determined by using latent class analysis based on clinical factors and vira
48 admission was avoidable was quantified using latent class analysis based on the independent reviews.
49 ing macroplastic and microplastic particles (latent class analysis) based on statistically defensible
50 es of aspergillosis in CF were identified by latent class analysis by using serologic, RT-PCR, and GM
51 en classifying detectability of cytokines by latent class analysis, carrying the 17q21 risk allele rs
52                 Using day 1 cytokine levels, latent class analysis categorized patients into two subp
53                                              Latent class analysis classified GERD patients based on
54                                          The latent class analysis confirmed that the RNA-based test
55                                              Latent class analysis demonstrated that physicians could
56  Model performance was evaluated against the latent class analysis-derived phenotype.Measurements and
57 otypes and to assess concordance between the latent class analysis-derived phenotypes and phenotypes
58 erstanding of biological differences between latent class analysis-derived phenotypes and to assess c
59                                              Latent class analysis detected 7 multivariate disorder c
60                                           In latent class analysis, distinct trajectories characteriz
61                  Here, we introduce LACE-UP [latent class analysis ensembled with UMAP (uniform manif
62 Heart Failure Criteria (MHFC), derived using latent class analysis from widely available items in the
63  first time, to the authors' knowledge, that latent class analysis has been applied to longitudinal d
64  hospitalized with bronchiolitis in Finland, latent class analysis identified 3 bronchiolitis profile
65 e, 8.7 [5.0-12.5] years; 5407 [60.5%] male), latent class analysis identified 3 clusters characterize
66                                              Latent class analysis identified 3 distinct clusters of
67                                              Latent class analysis identified 4 subgroups: urgency fo
68                                              Latent class analysis identified 4 subtypes of atopic ec
69                                              Latent class analysis identified 5 employment quality ty
70                                              Latent class analysis identified 8 patient groups.
71                                              Latent class analysis identified differential survival b
72                                  Multi-group latent class analysis identified three groups of COVID m
73                                     However, latent-class analysis identified four distinct psycholog
74                                         This latent-class analysis identified some patients with upfr
75 bination of high-dimensional phenotyping and latent class analysis identifies subtypes of HFREF with
76 ages 31-53 years) can be characterized using latent class analysis in a population-based birth cohort
77 matory, have been consistently identified by latent class analysis in numerous cohorts, with widely d
78 nflammatory phenotypes?Methods: We performed latent class analysis in ROSE using preenrollment clinic
79 rts from birth to 7 years were derived using latent class analysis in the Avon Longitudinal Study of
80  been a recent upsurge in the application of latent class analysis in the fields of critical care, re
81                        We present a Bayesian latent class analysis in which we evaluated the accuracy
82 of ADHD subtypes as defined by DSM-IV and by latent-class analysis in a population sample of adolesce
83 tline the key processes necessary to perform latent class analysis including some of the challenges a
84                                Findings from latent class analysis indicate that MDMA users have a si
85                                              Latent class analysis indicated 5 classes of poly-tobacc
86                                              Latent class analysis is a probabilistic modeling algori
87 iles for the long-term weekly use of DCPs by latent class analysis (LCA) and assess their association
88 asses of allergic respiratory diseases using latent class analysis (LCA) and distinguish each class u
89    GI symptom groups were determined using a latent class analysis (LCA) approach.
90  comparisons assessed with kappa scores, and latent class analysis (LCA) as an unbiased estimator of
91 gE sensitization profiles were identified by latent class analysis (LCA) by considering IgE-reactivit
92                                              Latent class analysis (LCA) can address some limitations
93                                              Latent class analysis (LCA) has been used extensively to
94      Interleukin-18 (IL-18) plasma level and latent class analysis (LCA) have separately been shown t
95                                              Latent class analysis (LCA) identified subgroups of PEH,
96 ation over the first 6 years of life using a latent class analysis (LCA) integrating 3 dimensions of
97                                              Latent class analysis (LCA) is a mathematical technique
98                                              Latent class analysis (LCA) is a type of modeling analys
99                                       With a latent class analysis (LCA) model that included all the
100                                            A latent class analysis (LCA) model was applied to analyze
101                               We performed a latent class analysis (LCA) of OC features, cross-sectio
102                                              Latent class analysis (LCA) of TTE/hemodynamic parameter
103                                     A custom latent class analysis (LCA) procedure was developed to i
104                                              Latent class analysis (LCA) provides an unbiased statist
105                                      We used latent class analysis (LCA) to group participants based
106          In a prior report, the authors used latent class analysis (LCA) to identify a distinctive at
107 NG, AND PARTICIPANTS: This cohort study used latent class analysis (LCA) to identify clinical subgrou
108                       We apply a data-driven latent class analysis (LCA) to model 54 specific health
109 from 2004-2014 Nationwide Inpatient Samples, latent class analysis (LCA) was applied to 10 procedure
110                                              Latent class analysis (LCA) was conducted in a populatio
111                                     Methods: Latent class analysis (LCA) was independently performed
112                                              Latent class analysis (LCA) was performed to estimate th
113                                       Simple latent class analysis (LCA) was used to assign participa
114                                              Latent class analysis (LCA) was used to classify the par
115                                              Latent class analysis (LCA) was used to determine visual
116                                              Latent class analysis (LCA) was used to identify MetS an
117                                              Latent class analysis (LCA) was used to identify underly
118 mine whether wheezing phenotypes, defined by latent class analysis (LCA), are associated with nine 17
119                                              Latent class analysis (LCA), based on prenatal opioid us
120                                        Using latent class analysis (LCA), we classified participants
121 on between dietary patterns, derived through latent class analysis (LCA), with visceral adiposity ind
122 acterize the microbiological signatures of a latent class analysis (LCA)-derived periodontal stratifi
123  a cohort of NERD patients with the means of latent class analysis (LCA).
124 s and risk factors of allergic disease using latent class analysis (LCA).
125 atients with AERD through the application of latent class analysis (LCA).
126 e patient infection standard (PIS) and using latent class analysis (LCA).
127 otypic associations via multiple regression; latent-class analysis (LCA) to investigate the co-occurr
128 ostic enrichment of both cluster-derived and latent-class analysis (LCA)-derived biological ARDS subp
129 pplying two latent class models-longitudinal latent class analysis (LLCA) and latent class growth ana
130 henotypes had been previously assigned using latent class analysis.Measurements and Main Results: The
131                                       First, latent class analysis methodology was applied independen
132                      We applied unsupervised latent class analysis methods utilizing baseline clinica
133                                  A two-class latent class analysis model best fit the population (P =
134                           A two-subphenotype latent class analysis model had the best fit in both the
135                                 A five-class latent class analysis model was collapsed into cases and
136                                          The latent class analysis model with the best fit to PASTURE
137 uantiFERON-TB Gold In-Tube (QFT) tests using latent class analysis model.
138 n-phenotype differences compared with binary latent class analysis models and ascertained association
139 or the class-defining plasma proteins in the latent class analysis, no correlation was observed with
140 psis phenotypes prior to randomization using latent class analysis of 20 clinical and biomarker varia
141 sified women by their dietary patterns using latent class analysis of 66 foods and studied the associ
142                                      We used latent class analysis of baseline clinical and plasma bi
143      We identified 2 sepsis phenotypes using latent class analysis of clinical and protein biomarker
144 iabetes and in diabetes groups, defined by a latent class analysis of diabetes duration, complexity,
145 iabetes and in diabetes groups, defined by a latent class analysis of diabetes duration, complexity,
146 ration and frequency, and using longitudinal latent class analysis of different smoking behaviour pat
147                                              Latent class analysis of family income, education, occup
148                                              Latent class analysis of items on the Fagerstrom Test fo
149 -life wheeze trajectories were defined using latent class analysis of longitudinal early-life wheezin
150 s higher- or lower-interventional based on a latent class analysis of survey responses about the freq
151                  We then performed a de novo latent class analysis of the 14 BALF biomarkers to ident
152                                        Using Latent Class Analysis of the PROMIS-10 data, we identifi
153                                              Latent class analysis of triazole-naive patients identif
154                                              Latent-class analysis of 613 participants (mean age, 65;
155                                        Using latent class analysis on behavioral survey responses, we
156 ries were modelled using polytomous variable latent class analysis (poLCA) in both complete-case and
157 uracy of each test, estimated using Bayesian latent class analysis (presented with 95% Bayesian credi
158                                            A latent class analysis produced 2- and 3-class models rep
159                                         In a latent class analysis, real-time PCR had significantly h
160                                 Longitudinal latent class analysis revealed 3 grass sensitization tra
161                                              Latent class analysis revealed 4 distinct preference phe
162                                              Latent class analysis revealed 4 groups of respondents:
163            Hierarchical cluster analysis and latent class analysis revealed developmental changes in
164                                              Latent class analysis revealed physical and mental healt
165                                              Latent class analysis revealed that the estimated propor
166                                              Latent class analysis revealed two respondent classes.
167                                     However, latent-class analysis revealed 2 distinct preference cla
168                                              Latent-class analysis revealed strong patient preference
169                                              Latent class analysis showed that the brief set of socia
170                                              Latent class analysis shows that African American males
171                                              Latent class analysis stratified by ethnicity identified
172 ession (overall levels of ADHD symptoms), 2) latent class analysis (subclasses of ADHD symptoms by se
173 /impulsive DSM-IV subtype and the individual latent-class analysis subtypes did not co-cluster.
174                                              Latent class analysis suggested five schizophrenic syndr
175 ng high-dimensional clinical phenotyping and latent class analysis that may be useful in personalizin
176  infection status was strengthened by use of latent-class analysis that combined data for markers of
177                                           In latent class analysis, the class with child maltreatment
178                                           In latent class analysis, the sensitivity of DPPT was 93% (
179                                       In the latent-class analysis, the highest-order maternal weight
180                                        Using latent class analysis, three groups emerged: diabetic (5
181                          We proceed by using Latent Class Analysis to assess whether it is possible t
182                      We used cross-sectional latent class analysis to characterise patterns of bevera
183                                      We used latent class analysis to characterise the early infectio
184 SIC performs an unsupervised, fully Bayesian latent class analysis to estimate false positive and fal
185                             We used Bayesian latent class analysis to estimate the prevalence of LTBI
186                             We used Bayesian latent class analysis to estimate the prevalence of LTBI
187 behavioral, and psychosocial traits, we used latent class analysis to identify behavioral phenotypes
188                We designed a nested, 2-stage latent class analysis to identify cross-sectional sensit
189 od-parent attributes, with subsequent use of latent class analysis to identify groups of parents with
190                                      We used latent class analysis to identify patients with distinct
191           As in the original cohort, we used latent class analysis to identify phenotypes on the basi
192  We performed nonsupervised clustering using latent class analysis to identify subgroups of patients
193                                      We used latent class analysis to identify subtypes of fatigue.
194                                  We employed latent class analysis to identify the health lifestyle p
195 eze and cough in early childhood by applying latent class analysis to longitudinal data from a popula
196 trajectory analysis-a special application of latent class analysis to longitudinal data-among new ant
197 stop shop for investigators seeking to apply latent class analysis to their data.
198 nction." Dietary patterns were identified by latent class analysis using data collected with a valida
199                           SES was derived by latent class analysis using family income, occupation or
200                                              Latent class analysis was applied to 14 disaggregated DS
201                                              Latent class analysis was applied to detailed symptomati
202                                              Latent class analysis was applied to nine eating disorde
203                                     Bayesian latent class analysis was applied to test results to est
204                                     Bayesian latent class analysis was applied to test results to est
205                                              Latent class analysis was carried out to determine types
206                                            A latent class analysis was conducted of 12 adverse childh
207                                              Latent class analysis was conducted to identify multimor
208                                            A latent class analysis was conducted to identify patterns
209           Design, Setting, and PARTICIPANTS: Latent class analysis was conducted using 2003-2008 data
210                                              Latent class analysis was found to be a useful tool for
211                                 Longitudinal latent class analysis was performed by using pain intens
212                                            A latent class analysis was performed to identify "latent
213                                              Latent class analysis was performed to identify phenotyp
214                                              Latent class analysis was performed to identify risk cla
215                                              Latent class analysis was performed with prenatal and ea
216                                              Latent class analysis was performed with the statistical
217                                              Latent class analysis was used and identified five class
218 to identify distinct trajectories, and joint latent class analysis was used to assess joint patterns
219                                              Latent class analysis was used to assess the clustering
220                                              Latent class analysis was used to derive phenotypes base
221                                              Latent class analysis was used to examine whether physic
222                                              Latent class analysis was used to generate two latent cl
223                                            A latent class analysis was used to identify and character
224                                              Latent class analysis was used to identify groups of pat
225                                              Latent class analysis was used to identify immune phenot
226                                              Latent class analysis was used to identify inflammation
227                                              Latent class analysis was used to identify segments of p
228                                              Latent class analysis was used to identify socioeconomic
229                                              Latent class analysis was used to identify subgroups wit
230                                              Latent class analysis was used to identify subgroups.
231                                              Latent class analysis was used to identify subphenotypes
232                                              Latent class analysis was used to identify subtypes base
233                                          The latent class analysis was used to identify subtypes of a
234                                 Longitudinal latent class analysis was used to identify underlying lo
235                                 Longitudinal latent class analysis was used to investigate patterns o
236 ine which elements of ADHD cluster together, latent-class analysis was applied to data obtained from
237                                              Latent-class analysis was most compatible with the exist
238                                              Latent-class analysis was used to evaluate the usefulnes
239                                        Using latent class analysis, we derived dietary patterns based
240                               Using Bayesian Latent Class Analysis, we estimated the sensitivity and
241                                        Using latent class analysis, we identified three distinct clas
242                           Through the use of latent class analysis, we revealed a high-risk subtype (
243                                       By the latent class analysis, we show three distinct clusters i
244 asses derived from 5 UK-based birth cohorts (latent class analysis) were used to study GxE between th
245 ar activation times between burst pairs, and latent class analysis, which revealed a population of 5-
246 yndrome and meaningful subtypes emerged from latent class analysis, which were validated by patterns
247 n 7434 subjects with non-missing indicators, latent class analysis yielded 5 latent classes.

 
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