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Browsing byAuthorLombardo, L
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Showing results 2 to 9 of 9
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Issue Date
Title
Author(s)
2019-12-01
Comparative assessment using boosted regression trees, binary logistic regression, frequency ratio and numerical risk factor for gully erosion susceptibility modelling
Arabameri, A
;
Pradhan, B
;
Lombardo, L
2019-01-01
Comparison of machine learning models for gully erosion susceptibility mapping
Arabameri, A
;
Chen, W
;
Loche, M
;
Zhao, X
;
Li, Y
;
Lombardo, L
;
Cerda, A
;
Pradhan, B
;
Bui, DT
2021-01-01
Educational and Self-Management Needs of Adults Living With Atrial Fibrillation: Perspectives of Patients, Clinicians, and Experts
Ferguson, C
;
Lombardo, L
;
Hickman, L
;
Inglis, S
;
Bajorek, B
;
Wynne, R
2022-08-02
Educational Needs of People Living with Atrial Fibrillation: A Qualitative Study.
Ferguson, C
;
Hickman, LD
;
Lombardo, L
;
Downie, A
;
Bajorek, B
;
Ivynian, S
;
Inglis, SC
;
Wynne, R
2022-09
Interventions to promote oral care regimen adherence in the critical care setting: A systematic review.
Lombardo, L
;
Ferguson, C
;
George, A
;
Villarosa, AR
;
Villarosa, BJ
;
Kong, AC
;
Wynne, R
;
Salamonson, Y
2020-03
A methodological comparison of head-cut based gully erosion susceptibility models: Combined use of statistical and artificial intelligence
Arabameri, A
;
Cerda, A
;
Pradhan, B
;
Tiefenbacher, JP
;
Lombardo, L
;
Bui, DT
2021-04-13
New technologies call for new strategies for patient education.
Lombardo, L
;
Wynne, R
;
Hickman, L
;
Ferguson, C
2018-11-01
Spatial modelling of gully erosion using evidential belief function, logistic regression, and a new ensemble of evidential belief function–logistic regression algorithm
Arabameri, A
;
Pradhan, B
;
Rezaei, K
;
Yamani, M
;
Pourghasemi, HR
;
Lombardo, L