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Multi-Disciplinary Blue Ribbon ePoster 
  AAPM ePoster Library
BReP-SNAP-M-1 : 3D Dose Predictions and Plan Quality Assessment in MRI Guided Online Plan Adaptation Using Artificial Neural Network (ANN) Models
D.Yang*A.ThomasY.FuH.GachH.Li
BReP-SNAP-M-2 : 3D Intrafraction Assessment of Pelvis and Abdominal Gastrointestinal Peristalsis in MR-Guided Online Adaptive Radiotherapy (MRgoART)
K.Mittauer*R.HerreraM.ChuongT.RomagueraD.AlvarezD.Doty
J.BryantA.BoneR.KotechaM.HallN.Kalman
M.MehtaJ.ContrerasA.Gutierrez
BReP-SNAP-M-3 : A Comparison of Convolutional Neural Networks and Logistic Regression for the Detection of Vertebral Body Misalignments During Radiation Therapy
R.Petragallo*J.Lamb
BReP-SNAP-M-4 : A Comprehensive Framework for Radiotherapy Treatment Plan Quality Evaluation in Large Multiple Institution Dataset
L.Yuan*R.KapoorW.SleemanM.HaganJ.PaltaM.Rosu-Bubulac
BReP-SNAP-M-6 : A Deep Learning Model to Predict a Diagnosis of MCI by Using Static and Dynamic Brain Connectomics
D.CuiJ.JinZ.LiuT.Yin*
BReP-SNAP-M-7 : A Depthwise Separable Convolution Neural Network for Survival Prediction of Head & Neck Cancer
R.Li*A.DasN.BiceP.RadA.RoyN.Kirby
N.Papanikolaou
BReP-SNAP-M-8 : A Method to Estimate Accumulated Dose Uncertainties Induced by Deformable Image Registration Discrepancies for Adaptive Proton Therapy
F.Amstutz*L.NenoffC.RibeiroF.AlbertiniA.KnopfD.Weber
A.LomaxY.Zhang
BReP-SNAP-M-9 : A Method to Predict the Patient-Specific Dose-Volume Histogram Curves for Radiotherapy Planning with Deep Learning
X.Chen*K.MenJ.YiJ.Dai
BReP-SNAP-M-10 : A Multi-Phase Cross-Modality Deformable Bio-Tissue Phantom for Deformable Image Registration Validation
A.Qin*M.SnyderM.LiuX.DingW.ZhengQ.Liu
S.ChenJ.LiangD.Yan
BReP-SNAP-M-11 : A Novel Kernel-Weighted Back-Projection Reconstruction Algorithm for Compton Camera Imaging
R.Panthi*D.MackinS.PetersonP.MaggiJ.PolfS.Beddar
BReP-SNAP-M-12 : A Novel Multi-Path 3D Dense-UNet for Improving Automatic Segmentation of the Glioblastoma GTV On Multi-Modal MR Images
J.Lewis*K.SinghraoY.YangX.QiD.RuanJ.Fu
BReP-SNAP-M-13 : A Novel Real-Time Markerless Target Tracking Pipeline Based On Faster R-CNN for Lung Cancer Radiotherapy
L.Deng*Z.DaiX.LiangH.ZhaoH.QuanY.Xie
BReP-SNAP-M-14 : A Patient Risk Model to Determine the Optimal Frequency of Quality Control for Radiotherapy Machines
M.Ma*J.Dai
BReP-SNAP-M-15 : An Adversarial Machine Learning Framework and Biomechanical Model Guided Approach for Generating 3D Lung Tissue Elasticity From Low Dose End-Exhalation CT
A.SanthanamB.Stiehl*M.LauriaI.BarjaktarevicS.HsiehD.Low
BReP-SNAP-M-16 : Assessing Inter and Intrafraction Target Motion in Lung SBRT Using Deformable Image Registration
J.Liang*D.LackQ.LiuR.SandhuL.BenedettiI.Grills
C.StevensD.Yan
BReP-SNAP-M-17 : Assessing Longitudinal CT Perfusion Changes in Pancreas and Pelvic Node Tumors Treated with SBRT On Prospective Phase I Dose Escalation Trials
T.Patton*A.SantosoT.ReinickeY.VinogradskiyQ.DiotC.Fisher
K.GoodmanB.Jones
BReP-SNAP-M-18 : Assessment of Texture Feature Robustness Using a Novel 3D-Printed Phantom
K.Spuhler*J.TeruelP.Galavis
BReP-SNAP-M-19 : Association of Lung CT Voxel-Based Radiomics Feature Map with Galligas PET Lung Ventilation Imaging
Z.Yang*K.LafataX.ChenY.ChangF.Yin
BReP-SNAP-M-20 : Attention-Based Mask Regional Convolutional Neural Network for Delineation of Multiple Organs in Head-And-Neck MRI
X.Dai*Y.LeiY.FuT.WangJ.ZhouM.McDonald
W.CurranT.LiuX.Yang
BReP-SNAP-M-21 : Automatic CT Segmentation for Radiotherapy Treatment Planning: How Good Is Good Enough?
W.Ingram*L.Dong
BReP-SNAP-M-22 : Automatic Detection of Dental Artifact in a Fully-Automated Treatment Planning Workflow
S.Hernandez*C.SjogreenS.GayT.NethertonA.OlanrewajuC.Nguyen
D.RheeJ.MendezL.CourtC.CardenasL.Zhang
BReP-SNAP-M-23 : Automatic Location and Size Selection of Round Applicators for AccuBoost Treatments
F.West*S.RolesJ.PatrickR.MunbodhM.RivardJ.Hepel
K.LeonardD.WazerZ.Saleh
BReP-SNAP-M-24 : Automatic Target Segmentation and Uncertainty Prediction for Post-Prostatectomy Radiotherapy Planning Using Bayesian U-Net
X.Xu*C.LianA.WangT.RoyceR.ChenJ.Lian
D.Shen
BReP-SNAP-M-25 : Automatic Tumor and Multi-Organ Segmentation Technique in CT Based On Deep Learning for Radiation Therapy After Breast-Conserving Surgery
J.Lee*H.ChoS.YeD.ChoiW.ParkH.Kim
W.ChoH.Kim
BReP-SNAP-M-26 : Auto-Segmentation of Pelvic OARs On MRI Multi-Sequence Using An Fused-Unet
z.chengT.ZengY.LiuL.LaiX.Yang*s.Huang
BReP-SNAP-M-27 : Beam-Energy and Depth-Of-Interaction Estimation in MV Imaging Using a Dual-Ended Readout
M.Myronakis*R.Berbeco
BReP-SNAP-M-28 : Beams-Eye-View Tracking of Prostate Fiducial Markers During VMAT Treatments
A.Mylonas*E.HewsonP.KeallJ.BoothD.Nguyen
BReP-SNAP-M-29 : Branch-UNet for Intraprostatic Lesion Segmentation in Multi-Parametric MRI Images for Boosting Radiotherapy of Prostate Cancer
Y.Chen*L.XingH.BagshawM.BuyyounouskiB.Han
BReP-SNAP-M-30 : Can Daily Online Adaptive Therapy Overcome Prostate Patients' Periodic Non-Adherence to Full Bladder/Empty-Rectum Protocols?
M.Moazzezi*K.MooreK.KislingC.BojechkoX.Ray
BReP-SNAP-M-31 : Can Machine Learning Optimization (MLO) Auto Planning Clinically Replace Multi-Criteria Optimization (MCO) Manual Planning in Complex Pancreatic VMAT with Dose Painting?
Y.Wang*H.PrichardJ.WoT.Hong
BReP-SNAP-M-32 : Cardiac Substructure Tracking During Ablative Radiotherapy
N.Hindley*C.ShiehS.LydiardT.ReynoldsP.Keall
BReP-SNAP-M-33 : Cascading Deep Multi-Label Network for CT Liver and Spleen Structure Segmentation: Learning From Imperfect Clinical Data
R.Haq*A.JacksonA.ApteM.MontovanoA.WuJ.Deasy
M.Thor
BReP-SNAP-M-34 : CBCT Scatter Correction Using Monte Carlo Simulations and Deep Convolutional Neural Networks for Adaptive Proton Therapy
A.Lalonde*B.WineyJ.VerburgH.PaganettiG.Sharp
BReP-SNAP-M-35 : Characterization of Diffusion Weighted MRI and Apparent Diffusion Coefficient Calculation On a Low Field MR-LINAC Radiotherapy System at Multiple Gantry Angles
B.Lewis*A.GutaS.MackeyH.GachS.MuticO.Green
T.Kim
BReP-SNAP-M-36 : Classification and Segmentation of Tumor Cells and Nuclei On Biopsy Slides Using Deep Learning for Microdosimetry Applications
L.Weishaupt*J.TorresS.Camilleri-broëtS.Côté MaldonadoS.Abbasinejad Enger
BReP-SNAP-M-37 : Combining Delta-Radiomics and Clinical Biomarkers Based On KNN-PCA Classification to Improve Treatment Outcome Prediction for Pancreatic Cancer
H.Nasief*W.HallC.ZhengS.TsaiB.EricksonX.Li
BReP-SNAP-M-38 : Combining Monte Carlo with a Generative Adversarial Network to Predict High-Resolution Low-Noise Dose Distributions
V.Vasudevan*C.HuangE.SimieleL.YuL.XingE.Schueler
BReP-SNAP-M-39 : Combining Radiomics and Convolutional Neural Network to Predict Tumor Growth of Vestibular Schwannoma
K.Wang*L.ChenN.George-jonesJ.HunterJ.Wang
BReP-SNAP-M-40 : Commissioning and Performance Testing of the First Prototype of AlignRT InBore, a Halcyon™-Dedicated Surface Guided Radiation Therapy Platform
D.NGUYEN*J.FarahJ.HughesP.MathieuN.BarbetM.Khodri
BReP-SNAP-M-41 : Comparison and Validation of Distortion Correction On a Low-Field MR-Guided Radiotherapy System
Y.Gao*J.PhamA.KalbasiA.RaldowP.HuY.Yang
BReP-SNAP-M-42 : Comparison of Accuracy and Performance of Monte Carlo Dose Calculations Involving Magnetic Fields: ARCHER VS. TOPAS
L.Mao*K.ShengQ.ChengH.YangJ.WangX.Pei
X.Xu
BReP-SNAP-M-43 : Compton Scatter Imaging for Tumor Tracking - Initial Experiment with a Photon-Counting Detector
K.Yang*Y.HuangX.JiaX.LiB.Liu
BReP-SNAP-M-44 : Cone Beam CT-Guided Adaptive Strategy in Pre-Operative Gastric Cancer Radiotherapy
M.Bleeker*K.GoudschaalA.BelJ.SonkeM.HulshofA.van der Horst
BReP-SNAP-M-45 : CT-Based Convolutional-Neural-Network Segmentation of HCC Regions with Lung-Cancer-Based Transfer Learning
N.Nagami*H.ArimuraJ.NojiriR.NakanoK.NinomiyaM.Ogata
S.TakitaS.KitamuraH.Irie
BReP-SNAP-M-46 : CT-Based Radiomics Analysis: A New Imaging Biomarker in Chronic Obstructive Pulmonary Disease?
R.Au*V.LiuM.KooW.TanJ.BourbeauJ.Hogg
H.CoxsonM.Kirby
BReP-SNAP-M-47 : CycleGAN Based Transfer Learning for Synthesizing CT Image From MR Image
W.Li*T.BaiD.NguyenA.OwrangiS.KazemifarY.Li
J.XiongY.XieS.Jiang
BReP-SNAP-M-48 : Data Shapely Based Auto-Labeling Algorithm
T.BaiB.WangB.Wang*D.NguyenS.Jiang
BReP-SNAP-M-49 : Deep Learning Augmented Proton Portal Imaging: A Phantom Study
S.Charyyev*Y.LeiJ.HarmsB.EatonM.McDonaldW.Curran
T.LiuJ.ZhouR.ZhangX.Yang
BReP-SNAP-M-50 : Deep Learning Techniques in Microdosimetry: Using Conditional Generative Adversarial Networks to Predict Energy Deposition On Cellular Length Scales
I.Mansour*R.Thomson
BReP-SNAP-M-51 : Deep Learning-Based Deformable Image Registration Method and Multiple Reference Registration Strategy for Tumor Target Tracking in 2D Cine MRI
y.zhang*T.MazurX.WuH.LiH.GachD.Yang
BReP-SNAP-M-52 : Deep Neural Network for Survival Analysis Using Intratumoral Radiomics and Dosiomics in the RTOG 0617 Clinical Trial
S.Lee*H.GengH.ZhongY.FanM.RosenY.Xiao
BReP-SNAP-M-53 : Deep Neural Network-Based Prediction of Dual-Energy Subtraction Images From Single-Energy X-Ray Fluoroscopy: A Feasibility Study
J.Wang*K.IchijiN.HommaX.ZhangY.Takai
BReP-SNAP-M-54 : Deep-Learning-Based Autosegmentation Outperforms Atlas-Based Autosegmentation in a Clinical Cohort of Breast Cancer Patients
J.Kleijnen*H.AkhiatM.HoogemanS.Petit
BReP-SNAP-M-55 : Detecting Pathological Complete Response in Esophageal Cancer After Neoadjuvant Therapy Based On Survival-Weighted Deep Learning: A Pilot Study
S.Cheng*W.YapE.Tu
BReP-SNAP-M-56 : Detection of Vessel Bifurcations in 3D Images for Automatic Objective Assessment of Deformable Image Registration Accuracy
G.Cazoulat*B.AndersonM.McCullochD.ElganainyM.ZaidP.Park
E.KoayK.Brock
BReP-SNAP-M-57 : Determining the Effect of Nano-Based Therapeutics in Cancer Vs Normal Cells
K.Bromma*L.CiconD.Chithrani
BReP-SNAP-M-58 : Development and Implementation of a Knowledge Base for Automated Segment Review
E.Pryser*M.SchmidtF.ReynosoW.Smith
BReP-SNAP-M-59 : Development of a Machine Learning Algorithm for Hybrid Interstitial Needle Prediction in High-Dose-Rate Cervical Brachytherapy
K.Stenhouse*M.RoumeliotisP.McGeachy
BReP-SNAP-M-60 : Development of a New Prompt Gamma Ray Detection System to Achieve Range Verification in Full 3 Dimensions for Pencil-Beam Scanning Proton Therapy
C.Panaino*R.MackayK.KirkbyM.Taylor
BReP-SNAP-M-61 : Development of An Inexpensive Patient Setup and Monitoring System Using An Open Source, GPU Computed, Deep Learning Algorithm
D.Cho*D.Mah
BReP-SNAP-M-62 : Dosimetric Impact of Interfraction Anatomical Variations On Breath-Hold SBRT for Pancreatic Cancer
J.Niedzielski*S.NgS.BeddarR.MartinE.HollidayG.Smith
B.MinskyA.KoongC.TaniguchiP.DasE.Koay
G.Sawakuchi
BReP-SNAP-M-63 : Dosimetric Predictors for Volumetric Liver Deformation and Change in Liver Function After SBRT for Hepatocellular Carcinoma: An In-Vivo Assessment Based On Longitudinal Magnetic Resonance Imaging
P.Brodin*A.Correa De SousaH.NashJ.TangW.ToméN.Ohri
S.KalnickiM.GargC.GuhaR.Kabarriti
BReP-SNAP-M-64 : Douglas-Rachford Fixed-Point Iteration of Sparsity Optimization with Deep Neural Networks Parameterized Inversion and Joint Image Prior (SOFPI-DR-Net) for Cine CT Image Reconstruction
J.Liu*H.GaoH.Ji
BReP-SNAP-M-65 : Evaluation of a Localized Correlation Based Predictive Metric as a Decision Making Tool in Online Image Guidance and Offline Adaptive Prostate Radiotherapy
A.Gopal*B.ZhangG.LasioS.LeeB.Yi
BReP-SNAP-M-66 : Evaluation of Lung Cancer SBRT Plans with Large Daily Tumor Motion Variations Using Daily 4D-CBCT
S.Balik*C.YurtseverT.ZhuangP.QiG.VideticK.Stephans
P.Xia
BReP-SNAP-M-67 : Evaluation of Proton Computed Tomography Detected by Multiple-Layer Ionization Chamber and Strip Chambers Through Monte Carlo Simulation with Human Head Phantoms
X.Chen*T.ZhaoR.LiuB.SunF.ReynosoS.Mutic
T.Zhang
BReP-SNAP-M-68 : Evaluation of Synthetic Single Energy and Dual Energy Radiographs to Predict Markerless Tumor Tracking Accuracy
J.Roeske*H.MostafaviR.PatelF.CassettaL.Zhu
BReP-SNAP-M-69 : Evaluation of Two Different Systems for the Deformable Segmentation of a Lung Tumor in the Treatment of NSCLC Using SBRT
Y.Cao*D.GhoshJ.GomezA.SinghH.Malhotra
BReP-SNAP-M-70 : ExacTrac Imaging Dose for Real Time Tumour Monitoring of Lung SBRT Patients Using Monte Carlo Simulation
A.Spurway*M.Sattarivand
BReP-SNAP-M-71 : Exploration of Potential Parameters That Influence When to Replan Head and Neck Cancer Patients
A.Andrade*G.ShenoudaJ.Kildea
BReP-SNAP-M-72 : Factors Contributing to Geometrical Accuracy in Online MRI-Linac Guided Brain Radiotherapy
M.Ruschin*C.MccannJ.StewartP.MaralaniM.CampbellA.Kim
Y.LeeA.CartyC.TsengA.SahgalB.Keller
BReP-SNAP-M-73 : Feasibility of Using Simultaneously Acquired MV/kV Images to Monitor Spine Target Position During SBRT Delivery: A Phantom Study
Q.Liu*J.LiangS.ChenD.DrakeD.Yan
BReP-SNAP-M-74 : Fiducial-Free Real-Time Image-Guided Robotic Radiosurgery for Tumors of the Spine
W.Zhao*D.CapaldiC.ChuangL.Xing
BReP-SNAP-M-75 : Forecasting Individual Patient Response to Radiotherapy with a Dynamic Carrying Capacity Model
M.Zahid*N.MohsinA.MohamedJ.CaudellL.HarrisonC.Fuller
E.MorosH.Enderling
BReP-SNAP-M-76 : From Fluence to Dose: Real-Time Adaptive MLC Tracking Using Dose Optimization
L.Mejnertsen*E.HewsonD.NguyenJ.BoothP.Keall
BReP-SNAP-M-77 : Functionally Weighted Airway Sparing (FWAS) to Preserve Post-SAbR Respiratory Function
E.Vicente*A.ModiriJ.KipritidisA.HaganK.YuH.Wibowo
Y.YanD.OwenM.MatuszakP.MohindraR.Timmerman
A.Sawant
BReP-SNAP-M-78 : Gold Fiducial Marker Visualization with Multifrequency Reconstruction for Frequency-Modulated BSSFP
Q.Peng*L.GoddardC.WuS.HsuW.Tomé
BReP-SNAP-M-79 : GPU-Based Acceleration of MV-CBCT Simulation
M.Shi*M.MyronakisM.JacobsonM.LehmannD.FergusonP.Baturin
P.HuberR.FueglistallerT.HarrisI.Valencia LozanoC.Williams
D.MorfR.Berbeco
BReP-SNAP-M-80 : Hard Constraint Approximation for Deep Learning in Radiation Therapy
R.McBeth*M.LinA.GodleyS.JiangD.Nguyen
BReP-SNAP-M-81 : High-Precision Dosimetry in Yttrium-90 Radioembolization Through Post-Procedural CT Imaging of Radiopaque Microspheres in a Porcine Model
C.Henry*M.StrugariG.MawkoK.BrewerR.AbrahamA.Syme
BReP-SNAP-M-82 : Human-Level Comparable Control Volumes Mapping with An Unsupervised-Learning Model for CT-Guided Radiotherapy
X.Liang*M.BassenneD.HristovT.IslamW.ZhaoM.jia
Z.ZhangC.HuangL.Xing
BReP-SNAP-M-83 : Image Guidance for Eye Tumors Treated with Proton Therapy: Noninvasive Eye Tracking Versus X-Ray Imaging
R.Via*G.FattoriA.PicaG.BaroniA.LomaxD.Weber
J.Hrbacek
BReP-SNAP-M-84 : Image Processing System by Super-Resolution Using Deep Learning Leading to Exposure Dose Reduction
H.Miyauchi*Y.TanakaK.TakahashiM.NakanoT.HasegawaM.Hashimoto
BReP-SNAP-M-85 : Image Quality of Tomographic Thermal Imaging Reconstruction
J.McCorkindale*Y.LiaoK.JonesJ.SunA.TempletonJ.Chu
J.Turian
BReP-SNAP-M-86 : Image Synthesis and Automation of Synthetic CT From MRI Data for MRI-Driven RT
S.Mousavi*A.Hosni-AbdalatyD.ShultzA.BerlinC.CoolensT.Stanescu
BReP-SNAP-M-87 : Imaging Dose in Breast Radiotherapy by X-Ray CT Calibration of Cherenkov Light
R.Hachadorian*P.BruzaM.JermynD.GladstoneL.JarvisB.Pogue
BReP-SNAP-M-88 : Improving the Accuracy of Bone Marrow Dosimetry Using the MIRD Phantom
K.Ferrone*C.WillisJ.MaL.PetersonF.GuanS.Kry
BReP-SNAP-M-89 : Improving the Treatment Accuracy of Standard Linear Accelerator-Based Pancreatic SBRT: Initial Clinical Experience with An In-House Position Monitoring System
S.Arumugam*J.BeggN.CollierM.Lee
BReP-SNAP-M-90 : Incorporating Explicit Dose-Volume Constraints in Deep Learning Improves Prediction of Deliverable Dose Distributions for Prostate VMAT Planning
S.Willems*L.VandewinckeleE.SterpinK.HaustermansW.CrijnsF.Maes
BReP-SNAP-M-91 : Incorporating GTV Information in a Multi-Stage Process to Improve Automatically Generated Field Apertures for Rectal Cancer Radiotherapy
K.Huang*P.DasL.ZhangM.AmirmazaheriC.NguyenD.Rhee
T.NethertonS.BeddarT.BriereD.FuentesE.Holliday
L.CourtC.Cardenas
BReP-SNAP-M-92 : Interfraction Dose Variation of Supine Whole-Breast Radiotherapy Measured From Daily Cone Beam Computed Tomography Images
A.Van Slyke*S.YoonN.TaunkG.FreedmanB.TeoJ.Zou
C.KennedyL.DongT.Li
BReP-SNAP-M-93 : Inter-Fractional Changes in Dose and the Effect On Post-Treatment Quality of Life for Patients with Head and Neck Cancer
S.Weppler*H.QuonA.YarschenkoN.HarjaiV.TranP.Chen
C.SchinkelW.Smith
BReP-SNAP-M-94 : Interfractional Motion Is Not a Predictor of Delivery Accuracy in Liver Stereotactic Body Radiation Therapy
S.Kuznetsova*R.SinhaN.PloquinK.Thind
BReP-SNAP-M-95 : Inter-Vendor Compatibility and Transfer Learning for MR-Based Synthetic CT Deep Learning Models for Domain Adaptation
P.Klages*N.TyagiH.Veeraraghavan
BReP-SNAP-M-96 : Intra-Fraction Motion and Dosimetric Effects of Liver Stereotactic Body Radiation Therapy During Free-Breathing, Exhale and Inhale Active Breath-Hold
T.Nano*M.FengD.CapaldiM.SharmaE.HirataS.Lim
M.AnwarM.Hira
BReP-SNAP-M-97 : Lifelong Learning for Clinical Target Segmentation of Nasopharyngeal Cancer with Fewer Labeling
K.Men*X.ChenY.ZhangJ.ZhuJ.YiJ.Dai
BReP-SNAP-M-98 : Machine Learning Analysis of Treatment Session Time Components
D.Smith*R.KashaniC.Mayo
BReP-SNAP-M-99 : Markerless Lung Tumor Tracking Using AI-DE Imaging
L.Zhu*F.ArrateP.BaturinP.PaysanH.MostafaviJ.van Heteren
F.CassettaJ.RoeskeS.Scheib
BReP-SNAP-M-100 : Markerless Lung Tumour Tracking in the Beam-Eye-View for Modern VMAT Treatments
R.TjangJ.BoothC.ShiehV.CailletP.KeallD.Nguyen*
BReP-SNAP-M-101 : Monte Carlo Investigation of the Radio-Enhancement Effects Produced by a Gadolinium-Based Nanoparticle (AGuIX)
R.Maschmeyer*H.ByrneA.McNamaraG.Le DucO.TillementF.Lux
Z.Kuncic
BReP-SNAP-M-102 : Moving From Geometric-Based to Risk-Based Adaptive Re-Planning in Head and Neck Radiotherapy
K.Brock*S.GryshkevychB.RigaudA.OhrtS.SvenssonC.Fuller
BReP-SNAP-M-103 : MR Guided Adaptive Radiotherapy Improves Target Coverage and OAR Sparing: Dosimetric Analysis of 1185 Adaptive Fractions and 4 Years Experience
D.Yang*H.KimO.GreenB.CaiL.HenkeJ.Cammin
B.GuH.LiH.Gach
BReP-SNAP-M-104 : Multicenter Characterization of MRIs Used for Radiation Therapy: The Collaborative Quality Assurance Program
L.Conroy*C.FoottitB.ZhangA.ElzibakR.HunterP.Rapley
J.Kraus HimmelmanE.GutierrezT.TadicA.McNivenD.Letourneau
BReP-SNAP-M-105 : Multi-Strategy Machine Learning Auto Planning for Liver SBRT: Improving Quality, Consistency and Efficiency for a Complex Treatment
H.Prichard*J.WoT.HongY.Wang
BReP-SNAP-M-106 : Novel Angle Descriptor Projection Overlap Volume for Improved Quality Assurance of Lung Cancer Radiotherapy Treatment Plans
J.Zhang*Y.YangY.ChenJ.ZhangM.Chen
BReP-SNAP-M-107 : Novel Localization Box with 3D Printing for Frameless Linac-Radiosurgery for Uveal Melanoma
Y.Zhang*Y.YuJ.LiW.ShiH.Liu
BReP-SNAP-M-108 : Off-Line Treatment Monitoring of Head and Neck Radiotherapy Using Daily Cone-Beam Computed Tomography: A Preliminary Study
S.Lee*B.ZhangG.LasioA.GopalI.LeeH.Xu
S.ChenB.Yi
BReP-SNAP-M-109 : On the Impact of Image Rotation On Quantitative Textural Features in Radiomics Analysis
H.Bagher-Ebadian*I.Chetty
BReP-SNAP-M-110 : One-Shot Uncertainty Estimation for Deep Network Based Image Segmentation
Y.Min*D.Ruan
BReP-SNAP-M-111 : Patient-Specific Deep Learning Model for Deformable Image Registration
A.Amini*Z.JiangY.ChangY.MoweryL.Ren
BReP-SNAP-M-112 : Plan Quality-Driven Evaluation of Automated Segmentation for Radiotherapy
J.Zhu*X.ChenT.ZhangN.BiK.MenJ.Dai
BReP-SNAP-M-113 : Predicting Glioblastoma Cell Motility with Radiomics
K.Mulford*M.McMahonD.OddeC.Wilke
BReP-SNAP-M-114 : Prediction of Dosimetric Variation in Dominant Intraprostatic Lesion with Simultaneous Integrated Boost for Pencil Beam Proton Therapy
C.Chang*D.BohannonK.StilesA.StanforthS.TianY.Wang
L.LinP.PatelT.LiuX.YangJ.Zhou
BReP-SNAP-M-115 : Prediction of Radiation Pneumonitis After Lung Stereotactic Body Radiation Therapy Using Dosiomics Features: A Retrospective Multi-Institutional Study
T.Adachi*M.NakamuraT.ShintaniT.MitsuyoshiR.KakinoT.Ogata
H.TanabeT.OnoH.HirashimaT.SakamotoM.Kokubo
Y.MatsuoT.Mizowaki
BReP-SNAP-M-116 : Progressive Deep Learning: An Accelerated Training Strategy for Medical Image Segmentation
B.Choi*J.ChunS.OlbergI.ParkH.LiJ.Kim
S.MuticJ.Park
BReP-SNAP-M-117 : Pulse Sequence Optimization for Non-EPI Diffusion-Weighted Imaging Sequences for Head & Neck On a 1.5T MR-Linac
B.McDonald*L.ZhuS.MulderA.DresnerA.MohamedS.Ahmed
R.HeY.DingC.Fuller
BReP-SNAP-M-118 : Quality Assurance for the Clinical Implementation of Kilovoltage Intrafraction Monitoring (KIM) in the TROG 17.03 Liver Ablative Radiotherapy with KIM (LARK) Multi-Institutional Clinical Trial
C.Sengupta*D.NguyenT.MoodieS.AlnaghyR.O'BrienP.Keall
BReP-SNAP-M-119 : Quantification of Lung Ventilation Using Voxel-Based Delta Radiomics Extracted From Thoracic 4DCT
X.Chen*K.LafataZ.YangF.Yin
BReP-SNAP-M-120 : Quantum-Inspired Approach to Predicting Geometric Changes in Head and Neck Cancer
J.Pakela*R.Ten HakenD.McShanM.MatuszakI.El Naqa
BReP-SNAP-M-121 : Radiomic Features Combined with Hybrid Machine Learning Robustly Identify Parkinson Disease Subtypes
M.Salmanpour*M.ShamsaeiA.SaberiG.HajianfarH.Soltanian-zadehA.Rahmim
BReP-SNAP-M-122 : Radiomics for Early Detection of Recurrence in Patients Treated with Lung Stereotactic Ablative Radiotherapy (SABR)
T.Kunkyab*D.HydeA.JirasekB.MouC.HastonJ.Andrews
S.Thomas
BReP-SNAP-M-123 : Rapid Commissioning of An MR-Linac with Hydrostatic and Cherenkov Imaging Techniques
R.Zhang*D.AlexanderB.WilliamsL.GatesF.RafieN.Nelson
P.BruzaB.PogueB.ZakiD.Gladstone
BReP-SNAP-M-124 : Real Time Monitoring of Anatomy During IMRT and VMAT Breast Radiotherapy Using EPID Imaging
B.Zwan*C.StantonH.ByrneA.BriggsJ.BoothP.Keall
BReP-SNAP-M-126 : Real-Time Adaptive Dose Scaling During MLC-Tracking On the Elekta Unity MR-Linac
P.Borman*P.WoodheadP.UijtewaalS.HackettJ.LagendijkB.Raaymakers
M.Fast
BReP-SNAP-M-127 : Real-Time Image Guidance with Single Panel X-Ray Imaging System During Radiation Treatment Delivery
H.Yan*T.GouC.LuoJ.LiC.DengX.Li
C.MaJ.Li
BReP-SNAP-M-129 : Relabeling Non-Standard to Standard Structure Names Using Geometric and Radiomic Information
W.Sleeman*J.PaltaP.GhoshR.Kapoor
BReP-SNAP-M-130 : Reproducibility and Correction of the Respiratory Phase Shift for Enhanced Internal-External Motion Correlation
A.Milewski*D.OlekW.MartinA.RimnerG.Li
BReP-SNAP-M-131 : Reproducibility Test of Radiomic Features Using Regularized Partial Correlation Network
J.Oh*A.ApteE.KatsoulakisN.RiazV.HatzoglouY.Yu
U.MahmoodM.PouryahyaA.IyerA.DaveN.Lee
J.Deasy
BReP-SNAP-M-132 : Robustness of Doppler Ultrasound Measurements: Impact of Acquisition Parameters On Peak Velocity
N.Lafata*M.RussS.RobertsonE.Samei
BReP-SNAP-M-133 : Rotating Linac-MR: B0 Orientation Invariant Quadrature Detection
R.Barta*V.VolotovskyyK.WachowiczB.FalloneN.De Zanche
BReP-SNAP-M-134 : Segmentation of Invisible Target Volume with Estimated Uncertainties for Post-Operative Prostate Cancer Radiotherapy
A.Balagopal*D.NguyenM.LinH.MorganN.DesaiR.Hannan
A.GarantY.GonzalezA.Sadeghnejad BarkousaraieS.Jiang
BReP-SNAP-M-135 : Simplification of Transmission Factor Determination for I-131 Gamma Camera Based Internal Dosimetry with Co-57 Solid Flood Source
Q.Liang*L.ChenR.KleinJ.HalamaR.HarveyJ.Schwartz
D.Fisher
BReP-SNAP-M-136 : Simultaneous Multi-Slice Accelerated 4D-MRI for the Unity MR-Linac
K.Keijnemans*P.BormanB.RaaymakersM.Fast
BReP-SNAP-M-137 : Stability and Reproducibility Study of Radiomics Features Using a 3D-Printed Biological Phantom
Y.Li*X.WangN.YueK.Nie
BReP-SNAP-M-138 : Supervised Learning-Based Ideal Observer Approximation for Joint Detection and Estimation Tasks
K.Li*W.ZhouS.HeH.LiM.Anastasio
BReP-SNAP-M-139 : Surface Guided Imaging and Facial Motion with Open Face Masks
V.Bry*H.ParenicaJ.RembishA.LiconM.NaessigK.Fischer
T.MartinP.MyersN.KirbyS.StathakisD.Saenz
N.PapanikolaouR.CrownoverK.Rasmussen
BReP-SNAP-M-140 : Synthetic Digital Reconstructed Radiograph for MR-Only Robotic Radiosurgery with Deep Convolutional Adversarial Networks
G.Szalkowski*D.NieT.ZhuM.DanceX.XuA.Wang
T.RoyceR.ChenD.ShenJ.Lian
BReP-SNAP-M-141 : Total Skin Electron Therapy Treatment Planning and Dose Distribution Verification Using Cherenkov Imaging and Computer Animation Techniques
T.Miao*M.JermynR.ZhangP.BruzaT.ZhuB.Williams
D.GladstoneB.Pogue
BReP-SNAP-M-142 : Towards Best Practice Guidelines for Reference Dosimetry in a 1.5 T MR-Linac
V.Iakovenko*B.KellerH.NusratA.SahgalA.Sarfehnia
BReP-SNAP-M-143 : Tumor Motion in Locally Advanced Lung Cancer: A Study of 46 Patients with 4DCT and 4DCBCT
L.Su*N.O'donnellK.DingR.Hales
BReP-SNAP-M-144 : Tumor Position Variation in Gating Window Using Cine MRI of 0.35T MRgRT
A.Guta*B.LewisZ.JiD.LamT.MazurS.Mutic
T.Kim
BReP-SNAP-M-145 : Two-Step Subspace Mapping Based Diaphragm Displacement Prediction by Markerless Abdominal Surface Measurement
H.Yu*E.ZhangS.YuZ.YangL.MaM.Chen
X.GuW.Lu
BReP-SNAP-M-146 : Uncertainty-Aware Reconstructed Image Correction for Proton Computed Tomography Using Bayesian Deep Learning
Y.Nomura*S.TanakaJ.WangH.ShiratoS.ShimizuL.Xing
BReP-SNAP-M-147 : Update On DVH Analytics: An Open-Source DICOM-RT Database Application
D.Cutright*M.GopalakrishnanA.Roy
BReP-SNAP-M-148 : Using An Independent Dose Calculation System to Optimize Clinical Thresholds and Reduce the Number of Physical Dose Measurements Required for Patient-Specific Quality Assurance
K.Hasse*B.ZiemerY.NatsuakiG.ValdesE.HirataT.Solberg
J.ScholeyA.Witztum
BReP-SNAP-M-149 : Validating Radiance's Treatment Planning System for Image-Guided Intra-Operative Radiation Therapy Using Plastic Cones
A.Steinmann*S.JainA.AyanN.GuptaJ.Woollard
BReP-SNAP-M-150 : Value Proposition of Online Adaptive Radiotherapy: Plan Fidelity and Deliverability
K.Mittauer*A.ShepardL.BayouthJ.Bayouth
BReP-SNAP-M-151 : Variable Margin Expansion to Account for MR Image Distortion in Treatment Planning
R.Mumme*C.NguyenA.OlanrewajuP.CastilloJ.WangX.Wang
C.CardenasL.CourtM.MartelJ.Yang
BReP-SNAP-M-152 : Real-Time Delineation of Implanted Cardioverter-Defibrillators and Metal Artifact Reduction in Cardiac Cone-Beam CT
I.Park*J.ChunS.OlbergB.CaiG.HugoJ.Kim
S.MuticJ.Park