Keyword search (4,163 papers available)

"Bias" Keyword-tagged Publications:

Title Authors PubMed ID
1 MATES: A tool for appraising the completeness with which a meta-analysis has been reported Morrison K; Pottier P; Pollo P; Ricolfi L; Williams C; Yang Y; Beillouin D; Cardoso SJ; Ferreira V; Gallagher B; Gan JL; Hao G; Keikha M; Kozlowsky-Suzuki B; Kiran Kumara TM; Latterini F; Leverkus AB; Macartney EL; Manrique SM; Martinig AR; Mizuno A; Nanayakkara S; Ntzani E; Ouédraogo DY; Pursell E; Simpson Z; Sleight H; Woon KS; Xia Z; Ghannad M; Grames E; Hennessy EA; IntHout J; Moher D; O' Dea RE; Page MJ; Whaley P; Lagisz M; Nakagawa S; 41411971
BIOLOGY
2 Weight bias, stigma and discrimination: a call for greater conceptual clarity Côté M; Forouhar V; Sacco S; Baillot A; Himmelstein M; Hussey B; Incollingo Rodriguez AC; Nagpal TS; Nutter S; Patton I; Pearl RL; Puhl RM; Ramos Salas X; Russell-Mayhew S; Alberga AS; 41280193
HKAP
3 Unintended consequences of measuring gestational weight gain: how to reduce weight stigma in perinatal care Alberga AS; Incollingo Rodriguez AC; Nagpal TS; 40652172
HKAP
4 The β2-adrenergic biased agonist nebivolol inhibits the development of Th17 and the response of memory Th17 cells in an NF-κB-dependent manner Hajiaghayi M; Gholizadeh F; Han E; Little SR; Rahbari N; Ardila I; Lopez Naranjo C; Tehranimeh K; Shih SCC; Darlington PJ; 39445009
BIOLOGY
5 Weight bias among Canadians: Associations with sociodemographics, BMI and body image constructs Côté M; Forouhar V; Edache IY; Alberga AS; 38964079
HKAP
6 Exploring the association between internalized weight bias and mental health among Canadian adolescents Lucibello KM; Goldfield GS; Alberga AS; Leatherdale ST; Patte KA; 38676448
HKAP
7 Weighty words: exploring terminology about weight among samples of physicians, obesity specialists, and the general public Wilson OWA; Nutter S; Russell-Mayhew S; Ellard JH; Alberga AS; MacInnis CC; 38131299
HKAP
8 Putting things right: An experimental investigation of memory biases related to symmetry, ordering and arranging behaviour Radomsky AS; Ouellet-Courtois C; Golden E; Senn JM; Parrish CL; 37793286
PSYCHOLOGY
9 Do trauma cue exposure and/or PTSD symptom severity intensify selective approach bias toward cannabis cues in regular cannabis users with trauma histories? DeGrace S; Romero-Sanchiz P; Tibbo P; Barrett S; Arenella P; Cosman T; Atasoy P; Cousijn J; Wiers R; Keough MT; Yakovenko I; O' Connor R; Wardell J; Rudnick A; Nicholas Carleton R; Heber A; Stewart SH; 37625353
PSYCHOLOGY
10 Weight bias internalization and beliefs about the causes of obesity among the Canadian public Vida Forouhar 37620795
HKAP
11 Modeling venous bias in resting state functional MRI metrics Huck J; Jäger AT; Schneider U; Grahl S; Fan AP; Tardif C; Villringer A; Bazin PL; Steele CJ; Gauthier CJ; 37498014
PERFORM
12 Visual biases in evaluation of speakers' and singers' voice type by cis and trans listeners Marchand Knight J; Sares AG; Deroche MLD; 37205083
PSYCHOLOGY
13 Predictors of support for anti-weight discrimination policies among Canadian adults Levy M; Forouhar V; Edache IY; Alberga AS; 37139379
HKAP
14 How well do covariates perform when adjusting for sampling bias in online COVID-19 research? Insights from multiverse analyses Joyal-Desmarais K; Stojanovic J; Kennedy EB; Enticott JC; Boucher VG; Vo H; Košir U; Lavoie KL; Bacon SL; 36335560
HKAP
15 Recommendations for making editorial boards diverse and inclusive Mahdjoub H; Maas B; Nuñez MA; Khelifa R; 36280401
BIOLOGY
16 Exploring weight bias internalization in pregnancy Nagpal TS; Salas XR; Vallis M; Piccinini-Vallis H; Alberga AS; Bell RC; da Silva DF; Davenport MH; Gaudet L; Rodriguez ACI; Liu RH; Myre M; Nerenberg K; Nutter S; Russell-Mayhew S; Souza SCS; Vilhan C; Adamo KB; 35906530
HKAP
17 Sample size and precision of estimates in studies of depression screening tool accuracy: A meta-research review of studies published in 2018-2021 Nassar EL; Levis B; Neyer MA; Rice DB; Booij L; Benedetti A; Thombs BD; 35362161
PSYCHOLOGY
18 Inclusion of currently diagnosed or treated individuals in studies of depression screening tool accuracy: a meta-research review of studies published in 2018-2021 Nassar EL; Levis B; Rice DB; Booij L; Benedetti A; Thombs BD; 35334411
PSYCHOLOGY
19 The relationship between weight bias internalization and healthy and unhealthy weight control behaviours Levy M; Kakinami L; Alberga AS; 35201546
PERFORM
20 Mapping changes in the obesity stigma discourse through Obesity Canada: a content analysis Kirk SF; Forhan M; Yusuf J; Chance A; Burke K; Blinn N; Quirke S; Salas XR; Alberga A; Russell-Mayhew S; 35071667
HKAP
21 Vaccine hesitancy: evidence from an adverse events following immunization database, and the role of cognitive biases Azarpanah H; Farhadloo M; Vahidov R; Pilote L; 34530804
JMSB
22 Data-driven methods distort optimal cutoffs and accuracy estimates of depression screening tools: a simulation study using individual participant data Bhandari PM; Levis B; Neupane D; Patten SB; Shrier I; Thombs BD; Benedetti A; 33838273
CONCORDIA
23 Weight bias and support of public health policies Edache IY; Kakinami L; Alberga AS; 33990876
PERFORM
24 Predicting Interpersonal Outcomes From Information Processing Tasks Using Personally Relevant and Generic Stimuli: A Methodology Study Serravalle L; Tsekova V; Ellenbogen MA; 33071861
CRDH
25 Prediction Errors in Depression: A Quasi-Experimental Analysis. Radomsky AS, Wong SF, Dussault D, Gilchrist PT, Tesolin SB 32746394
PSYCHOLOGY
26 The Association Between Weight-Based Teasing from Peers and Family in Childhood and Depressive Symptoms in Childhood and Adulthood: A Systematic Review. Szwimer E, Mougharbel F, Goldfield GS, Alberga AS 32002762
HKAP
27 Group sample sizes in nonregulated health care intervention trials described as randomized controlled trials were overly similar Thombs BD; Levis AW; Azar M; Saadat N; Riehm KE; Sanchez TA; Chiovitti MJ; Rice DB; Levis B; Fedoruk C; Lyubenova A; Malo Vázquez de Lara AL; Kloda LA; Benedetti A; Shrier I; Platt RW; Kimmelman J; 31866472
LIBRARY
28 Computer-Aided Diagnosis System of Alzheimer's Disease Based on Multimodal Fusion: Tissue Quantification Based on the Hybrid Fuzzy-Genetic-Possibilistic Model and Discriminative Classification Based on the SVDD Model. Lazli L, Boukadoum M, Ait Mohamed O 31652635
ENCS
29 Dopamine and light: effects on facial emotion recognition. Cawley E, Tippler M, Coupland NJ, Benkelfat C, Boivin DB, Aan Het Rot M, Leyton M 28633582
CSBN
30 Investigation of the confounding effects of vasculature and metabolism on computational anatomy studies. Tardif CL, Steele CJ, Lampe L, Bazin PL, Ragert P, Villringer A, Gauthier CJ 28159689
PERFORM

 

Title:Computer-Aided Diagnosis System of Alzheimer's Disease Based on Multimodal Fusion: Tissue Quantification Based on the Hybrid Fuzzy-Genetic-Possibilistic Model and Discriminative Classification Based on the SVDD Model.
Authors:Lazli LBoukadoum MAit Mohamed O
Link:https://www.ncbi.nlm.nih.gov/pubmed/31652635?dopt=Abstract
DOI:10.3390/brainsci9100289
Publication:Brain sciences
Keywords:Alzheimer's diseaseCAD systemSVDD classifierbias corrected FCM clusteringgenetic optimizationmultimodal fusionpossibilistic FCM clusteringtissue volume quantification
PMID:31652635 Category:Brain Sci Date Added:2019-10-28
Dept Affiliation: ENCS
1 Department of Electrical engineering, École de technologie supérieure, ÉTS, University of Quebec, Montreal, QC H3C 1K3, Canada. lilia.lazli.1@ens.etsmtl.ca.
2 CoFaMic research Center, Computer Science department, Université du Québec à Montréal, UQAM, University of Quebec, Montreal, QC H3C 3P8, Canada. lilia.lazli.1@ens.etsmtl.ca.
3 Computer Science department, Faculty of Engineering Sciences, University of Badji Mokhtar Annaba, UBMA, Annaba 23000, Algeria. lilia.lazli.1@ens.etsmtl.ca.
4 CoFaMic research Center, Computer Science department, Université du Québec à Montréal, UQAM, University of Quebec, Montreal, QC H3C 3P8, Canada. mounirboukadoum@courrier.uqam.ca.
5 Department of Electrical and Computer Engineering, Concordia University, Montreal, QC H3G 1M8, Canada. ait-mohamed@gmail.com.

Description:

Computer-Aided Diagnosis System of Alzheimer's Disease Based on Multimodal Fusion: Tissue Quantification Based on the Hybrid Fuzzy-Genetic-Possibilistic Model and Discriminative Classification Based on the SVDD Model.

Brain Sci. 2019 Oct 22;9(10):

Authors: Lazli L, Boukadoum M, Ait Mohamed O

Abstract

: An improved computer-aided diagnosis (CAD) system is proposed for the early diagnosis of Alzheimer's disease (AD) based on the fusion of anatomical (magnetic resonance imaging (MRI)) and functional (8F-fluorodeoxyglucose positron emission tomography (FDG-PET)) multimodal images, and which helps to address the strong ambiguity or the uncertainty produced in brain images. The merit of this fusion is that it provides anatomical information for the accurate detection of pathological areas characterized in functional imaging by physiological abnormalities. First, quantification of brain tissue volumes is proposed based on a fusion scheme in three successive steps: modeling, fusion and decision. (1) Modeling which consists of three sub-steps: the initialization of the centroids of the tissue clusters by applying the Bias corrected Fuzzy C-Means (FCM) clustering algorithm. Then, the optimization of the initial partition is performed by running genetic algorithms. Finally, the creation of white matter (WM), gray matter (GM) and cerebrospinal fluid (CSF) tissue maps by applying the Possibilistic FCM clustering algorithm. (2) Fusion using a possibilistic operator to merge the maps of the MRI and PET images highlighting redundancies and managing ambiguities. (3) Decision offering more representative anatomo-functional fusion images. Second, a support vector data description (SVDD) classifier is used that must reliably distinguish AD from normal aging and automatically detects outliers. The "divide and conquer" strategy is then used, which speeds up the SVDD process and reduces the load and cost of the calculating. The robustness of the tissue quantification process is proven against noise (20% level), partial volume effects and when inhomogeneities of spatial intensity are high. Thus, the superiority of the SVDD classifier over competing conventional systems is also demonstrated with the adoption of the 10-fold cross-validation approach for synthetic datasets (Alzheimer disease neuroimaging (ADNI) and Open Access Series of Imaging Studies (OASIS)) and real images. The percentage of classification in terms of accuracy (%), sensitivity (%), specificity (%) and area under ROC curve was 93.65%, 90.08%, 92.75% and 0.973; 91.46%, 92%, 91.78% and 0.967; 85.09%, 86.41%, 84.92% and 0.946 in the case of the ADNI, OASIS and real images respectively.

PMID: 31652635 [PubMed]





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