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ESTRO 2022
Programme
Radiomics, modelling and statistical...
06 May 2022 - 10 May 2022
Copenhagen, Denmark
Onsite/Online
ESTRO 2022
Session
Radiomics, modelling and statistical methods
Session Type:
Poster (digital)
Track:
Physics
Journey:
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My Programme
Machine Learning in NTCP prediction --- A superior alternative to the Lyman-Burman-Kutcher model
Pratik Samant
,
United Kingdom
Presentation Number:
PO-1755
Spatial Pyramid Pooling Survival Networks: Learning survival outcomes from whole slide images
Shenlun Chen
,
The Netherlands
Presentation Number:
PO-1756
A framework for in-vivo, voxel-based assessment of radiation response through multimodal imaging
Mikkel Skaarup
,
Denmark
Presentation Number:
PO-1757
Performance assessment of radiogenomics machine learning models for stratifying prostate cancer risk
Nerea Payan
,
United Kingdom
Presentation Number:
PO-1758
Delta Radiomics can predict complete pathological response in rectal cancer patients
Antonio Angrisani
,
Italy
Presentation Number:
PO-1759
Independent validation of a PET radiomic model predicting outcome after Radiotherapy for HN cancer
Martina Mori
,
Italy
Presentation Number:
PO-1760
Isotoxic temporal modulation of fraction size in conventional radiotherapy
Jan-Jakob Sonke
,
The Netherlands
Presentation Number:
PO-1761
Early detection of brain metastases using diffusion weighted imaging radiomics and machine learning
Joseph Madamesila
,
Canada
Presentation Number:
PO-1762
Radiomics and Deep Learning for the 2-Year Overall Survival Prediction in Lung Cancer
Anna Braghetto
,
Italy
Presentation Number:
PO-1763
Impact of dose errors on dose-response modelling
Louise Mövik
,
Sweden
Presentation Number:
PO-1764
Pre-processing and feature/volume correlation in CT radiomics in non-small cell lung cancer
Stefania Volpe
,
Italy
Presentation Number:
PO-1765
Deep learning classifier for MGMT promoter methylation status in glioblastoma cancer
Javier Barranco Garcia
,
Switzerland
Presentation Number:
PO-1766
Development of a MRI radiomic-based ML model to predict aggressiveness of prostate cancer
Odette Rios Ibacache
,
Chile
Presentation Number:
PO-1767
Regularized distributed Cox regression: a model for federated feature selection in survival analysis
BENEDETTA GOTTARDELLI
,
Italy
Presentation Number:
PO-1768
Prostate cancer radiogenomics machine learning classification for predicting disease progression
Ross Murphy
,
United Kingdom
Presentation Number:
PO-1769
Prediction of mandibular ORN with DL-based classification of 3D radiation dose distribution maps
Laia Humbert-Vidan
,
USA
Presentation Number:
PO-1770
Prediction of recurrence from post-operative MRI in GBM: Are we reaching limits of Deep-Learning?
Alexandre CARRÉ
,
France
Presentation Number:
PO-1771
Radiomic feature relevance in the prediction of pathological features of prostate cancer
Lars Johannes Isaksson
,
Italy
Presentation Number:
PO-1772
Feasibility of a novel harmonization method for NSCLC multi-centric radiomic studies
Andrea Botti
,
Italy
Presentation Number:
PO-1773
Oxygen distribution in the microenvironment and RT treatment outcome: a modeling study on metastasis
Luca Possenti
,
Italy
Presentation Number:
PO-1774
Associations of CT-based radiomics data with disease recurrence in early stage Lung cancer patients
Alexandra Giraldo Marin
,
Spain
Presentation Number:
PO-1775
Evaluation of two commercial deep learning OAR segmentation models for prostate cancer treatment
Jenny Gorgisyan
,
Sweden
Presentation Number:
PO-1776
Self-supervised image feature extraction for outcomes prediction in oropharyngeal cancer
Baoqiang Ma
,
The Netherlands
Presentation Number:
PO-1777
MRI Radiomics in prostate cancer: a reliability study
Antonio Angrisani
,
Italy
Presentation Number:
PO-1778
Detection of mandibular osteoradionecrosis using novel imaging biomarkers for head and neck cancer
Abdallah Mohamed
,
USA
Presentation Number:
PO-1779
Image-based data mining for radiation outcomes research applies to data from children
Abigail Bryce-Atkinson
,
United Kingdom
Presentation Number:
PO-1780
Radiomic features are minimally repeatable in test-retest MR images of cervical cancer
Chelmis Muthoni Thiong'o
,
United Kingdom
Presentation Number:
PO-1781
Methodological Quality of Machine Learning Quantitative Image Analysis Studies in Esophageal Cancer
Zhen Zhang
,
The Netherlands
Presentation Number:
PO-1782
Leverage radiomic and clinical data in predicting SRS treatment outcomes in patients with brain mets
Gianluca Carloni
,
Italy
Presentation Number:
PO-1783
predicting radiation pneumonitis based on retraining a deep learning feature extraction model
Zhixiang Wang
,
The Netherlands
Presentation Number:
PO-1784
Secondary cancer risk estimates from proton arc plans in pediatric craniopharyngioma.
Laura Toussaint
,
Denmark
Presentation Number:
PO-1785
Exploratory analysis of anatomical regions associated with Dysphagia measured with the MDADI
Antony Carver
,
United Kingdom
Presentation Number:
PO-1786
Impact of deep learning segmentation methods on the robustness of MR glioblastoma radiomics
Diem Vuong
,
Switzerland
Presentation Number:
PO-1787
Radiomic and dosiomic prediction of biochemical failure after Iodine-125 prostate brachytherapy
Masahiro Nakano
,
Japan
Presentation Number:
PO-1788
Quantitative evaluation of whole-body spatial normalisation in paediatric patients
Catarina Veiga
,
United Kingdom
Presentation Number:
PO-1789
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