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ESTRO 2023
Programme
Radiomics, modelling and statistical...
12 May 2023 - 16 May 2023
Vienna, Austria
ESTRO 2023
Session
Radiomics, modelling and statistical methods
Session Code:
7011
Session Type:
Poster (Digital)
Track:
Physics
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Deep learning-based classification of Xerostomia in ARTSCAN III patients
Viktor Rogowski
,
Sweden
Presentation Number:
PO-2083
A radiobiological model of the synergy between radiotherapy and immunotherapy
Isabel Gonzalez-Crespo
,
Spain
Presentation Number:
PO-2085
NTCP modelling with dosiomics features for postoperative complications in oesophageal cancer
Ruben Duwaerts
,
Belgium
Presentation Number:
PO-2087
Toxicity modelling in RT using Bayesian network topology optimization with simulated annealing
Kailyn Stenhouse
,
Canada
Presentation Number:
PO-2089
Can Radiomics support Early Regression Index in predicting rectal cancer response to MRgRT?
Luca Boldrini
,
Italy
Presentation Number:
PO-2090
A method to explore dose and LET for normal tissue response studies in large proton therapy cohorts
Rasmus Klitgaard
,
Denmark
Presentation Number:
PO-2091
Early toxicity and diffusion-weighted MRI assessment after Single-Dose Ablative Radiotherapy for PCa
Denis Panizza
,
Italy
Presentation Number:
PO-2092
Deep-learning standardization of MR images in radiomic studies-Application to LACC T2w MRI
Stephane Niyoteka
,
France
Presentation Number:
PO-2093
Dosiomics applied to biological dose and LET maps to predict Local Recurrence in Sacral Chordoma
Chiara Paganelli
,
Italy
Presentation Number:
PO-2094
In silico identification of dose equivalences in hypofractionated prostate cancer radiotherapy
Renaud de Crevoisier
,
France
Presentation Number:
PO-2095
Machine learning prediction of Dice similarity coefficient for accuracy evaluation
Yun Ming Wong
,
Singapore
Presentation Number:
PO-2096
Bladder dose surface maps identify subregions associated to late toxicities after prostate cancer RT
Eliana Gioscio
,
Italy
Presentation Number:
PO-2099
Radiomic features and PFS post-PACIFIC in the Blue Sky Observational Study on stage 3 PDL1+ NSCLC.
Andrea R. Filippi
,
Italy
Presentation Number:
PO-2100
ADDED VALUE OF MRI RADIOMICS TO PREDICT PATHOLOGICAL STATUS OF PROSTATE CANCER PATIENTS
Maria Giulia Vincini
,
Italy
Presentation Number:
PO-2101
CT-based radiomics for outcome prediction in oropharyngeal cancer patients treated with curative RT
Stefania Volpe
,
Italy
Presentation Number:
PO-2102
Demonstrating variability in radiomic analysis due to inconsistent conversion from contour to mask.
Emiliano Spezi
,
United Kingdom
Presentation Number:
PO-2103
MRI-Only SBRT in Gliomas: Dosimetry, Biology, and Radiomics Evaluation of a Pseudo-CT Generation
Xin Yang
,
China
Presentation Number:
PO-2104
Impact of windowing CT scans on the performance of a CNN for head and neck cancer prognosis
Pedro Mateus
,
The Netherlands
Presentation Number:
PO-2105
Machine learning prediction of pain response to palliative radiation therapy with CT-based radiomics
Oscar Llorian
,
Germany
Presentation Number:
PO-2106
Challenges in international real world evidence research collaboration. The PREDMORN experience
Laia Humbert-Vidan
,
USA
Presentation Number:
PO-2107
Impact of breathing and image filtering on radiomic features derived from 4D-CT in early-STAGE NSCLC
Stefania Volpe
,
Italy
Presentation Number:
PO-2108
Impact of normalisation methods for longitudinal MR images on radiomic features.
Aaron Rankin
,
United Kingdom
Presentation Number:
PO-2109
Normalised odds ratios help understand the relative importance of dose in multivariable models
Emmy Dalqvist
,
Sweden
Presentation Number:
PO-2110
The role of combined radiomics features as predictor of response to CRT or BRT in patients with OPC
Haruo Inokuchi
,
Japan
Presentation Number:
PO-2111
Radiomics of diffusion-MRI for predicting Gleason Score in Prostate Cancer treated with radiotherapy
Chiara Paganelli
,
Italy
Presentation Number:
PO-2112
Machine learning and image-oriented methods for head and neck cancer treatment outcome prediction
Bao Ngoc Huynh
,
Norway
Presentation Number:
PO-2114
Manual or automatic heart contours do not lead to difference in predicted survival in NSCLC patients
Miguel Fernandes
,
The Netherlands
Presentation Number:
PO-2116
CTV-free lung planning: Can we reduce toxicity whilst maintaining local control?
Matthew Craddock
,
United Kingdom
Presentation Number:
PO-2117
Late toxicity predictors in high-risk prostate cancer radiotherapy using accumulated delivered dose
Ashley Ong
,
Singapore
Presentation Number:
PO-2118
Repeatability of Voxel-Based Analysis pipeline in radiation oncology: a first pilot experiment
Laura Cella
,
Italy
Presentation Number:
PO-2119
In silico simulation for better prediction of biochemical recurrence in prostate cancer radiotherapy
Renaud de Crevoisier
,
France
Presentation Number:
PO-2120
Effect of early fractional lymphocyte loss on lymphopenia probability models for NSCLC
Takahiro Kanehira
,
Japan
Presentation Number:
PO-2122
Multiparametric MRI and PET to predict ISUP grade groups in prostate cancer patients
Erik Nilsson
,
Sweden
Presentation Number:
PO-2124
Contrastive self-supervised learning of lung tumor imaging predicts immunotherapy response
Tafadzwa Lawrence Chaunzwa
,
USA
Presentation Number:
PO-2125
Integrative Radiomic-Clinical Model Improves Long-term Prognostication of High-risk Prostate Cancer
Chi Fung CHING
,
Hong Kong (SAR) China
Presentation Number:
PO-2126
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