Detailed Information on Publication Record
2022
Understanding the impact of statistical and machine learning choices on predictive models for radiotherapy
BÖRÖNDY, Ádám, Katarína FURMANOVÁ and Renata Georgia RAIDOUBasic information
Original name
Understanding the impact of statistical and machine learning choices on predictive models for radiotherapy
Authors
BÖRÖNDY, Ádám, Katarína FURMANOVÁ (703 Slovakia, belonging to the institution) and Renata Georgia RAIDOU
Edition
Neuveden, Eurographics Workshop on Visual Computing for Biology and Medicine, p. 65-69, 5 pp. 2022
Publisher
The Eurographics Association
Other information
Language
English
Type of outcome
Stať ve sborníku
Field of Study
10200 1.2 Computer and information sciences
Country of publisher
Austria
Confidentiality degree
není předmětem státního či obchodního tajemství
Publication form
electronic version available online
References:
RIV identification code
RIV/00216224:14330/22:00126656
Organization unit
Faculty of Informatics
ISBN
978-3-03868-177-9
ISSN
Keywords in English
Visual Analytics; Life and medical sciences
Tags
Tags
International impact, Reviewed
Změněno: 6/4/2023 13:31, RNDr. Pavel Šmerk, Ph.D.
Abstract
V originále
During radiotherapy (RT) planning, an accurate description of the location and shape of the pelvic organs is a critical factor for the successful treatment of the patient. Yet, during treatment, the pelvis anatomy may differ significantly from the planning phase. A series of recent publications, such as PREVIS [FMCM∗21], have examined alternative approaches to analyzing and predicting pelvic organ variability of individual patients. These approaches are based on a combination of several statistical and machine learning methods, which have not been thoroughly and quantitatively evaluated within the scope of pelvic anatomical variability. Several of their design decisions could have an impact on the outcome of the predictive model. The goal of this work is to assess the impact of alternative choices, focusing mainly on the two key-aspects of shape description and clustering, to generate better predictions for new patients. The results of our assessment indicate that resolution-based descriptors provide more accurate and reliable organ representations than state-of-the-art approaches, while different clustering settings (distance metric and linkage) yield only slightly different clusters. Different clustering methods are able to provide comparable results, although when more shape variability is considered their results start to deviate. These results are valuable for understanding the impact of statistical and machine learning choices on the outcomes of predictive models for anatomical variability.