bibtype C - Conference Paper (international conference)
ARLID 0549009
utime 20240103230257.6
mtime 20211202235959.9
SCOPUS 85114388906
DOI 10.1109/ISSC52156.2021.9467862
title (primary) (eng) Bayesian Selective Transfer Learning for Patient-Specific Inference in Thyroid Radiotherapy
specification
page_count 6 s.
media_type E
serial
ARLID cav_un_epca*0549104
ISBN 978-1-6654-3429-4
title Proceedings of the 32nd Irish Signals and Systems Conference (ISSC) 2021
publisher
place Piscataway
name IEEE
year 2021
keyword Bioinformatics
keyword Decision support systems
keyword Nuclear medicine
keyword Bayesian Transfer learning
author (primary)
ARLID cav_un_auth*0418090
name1 Murray
name2 S. E.
country GB
author
ARLID cav_un_auth*0370768
name1 Quinn
name2 Anthony
institution UTIA-B
full_dept (cz) Adaptivní systémy
full_dept Department of Adaptive Systems
department (cz) AS
department AS
country IE
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
source
url http://library.utia.cas.cz/separaty/2021/AS/quinn-0549009.pdf
cas_special
project
project_id GA18-15970S
agency GA ČR
country CZ
ARLID cav_un_auth*0362986
abstract (eng) This paper outlines a selective transfer approach for Bayesian estimation of patient-specific levels of radioiodine activity in the thyroid during the treatment of differentiated thyroid carcinoma. The work addresses some limitations of previous approaches which involved generic, non-selective transfer of archival data. It is proposed that improvements in patient-specific inferences may be space-conditioned, probabilistic data predictor from the sub-population to the specific patient. In addition, the transfer times are chosen to complement the patient's own data. Currently the proposed method yields positive transfer, with stable performance improvements up to 34%. Although this is found to be 9% below the performance of the current state-of-the-art, the proposed method is significant in that it can be applied to other transfer learning applications where inhomogeneous parameter knowledge is available in the source feature space.achieved via transferring external population knowledge selectively. This involves matching the patient to a similar sub-population based on available metadata and formally transferring a feature-
action
ARLID cav_un_auth*0418083
name Irish Signals and Systems Conference (ISSC 2021) /23./
dates 20210610
mrcbC20-s 20210611
place Athlone
country IE
RIV BD
FORD0 10000
FORD1 10100
FORD2 10102
reportyear 2022
num_of_auth 2
presentation_type PR
inst_support RVO:67985556
permalink http://hdl.handle.net/11104/0325123
mrcbC61 1
cooperation
ARLID cav_un_auth*0418091
name Department of EE Engineering Trinity College Dublin, the University of Dublin
country IE
cooperation
ARLID cav_un_auth*0418092
name Mathematical Institute University of Oxford
confidential S
article_num 9467862
arlyear 2021
mrcbU14 85114388906 SCOPUS
mrcbU24 PUBMED
mrcbU34 WOS
mrcbU63 cav_un_epca*0549104 Proceedings of the 32nd Irish Signals and Systems Conference (ISSC) 2021 978-1-6654-3429-4 Piscataway IEEE 2021