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Dive into the research topics where J.R. van Sornsen de Koste is active.

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Featured researches published by J.R. van Sornsen de Koste.


British Journal of Radiology | 2011

Conventional 3D staging PET/CT in CT simulation for lung cancer: impact of rigid and deformable target volume alignments for radiotherapy treatment planning

G.G. Hanna; J.R. van Sornsen de Koste; K.J. Carson; Joe M. O'Sullivan; A.R. Hounsell; S. Senan

OBJECTIVE Positron emission tomography (PET)/CT scans can improve target definition in radiotherapy for non-small cell lung cancer (NSCLC). As staging PET/CT scans are increasingly available, we evaluated different methods for co-registration of staging PET/CT data to radiotherapy simulation (RTP) scans. METHODS 10 patients underwent staging PET/CT followed by RTP PET/CT. On both scans, gross tumour volumes (GTVs) were delineated using CT (GTV(CT)) and PET display settings. Four PET-based contours (manual delineation, two threshold methods and a source-to-background ratio method) were delineated. The CT component of the staging scan was co-registered using both rigid and deformable techniques to the CT component of RTP PET/CT. Subsequently rigid registration and deformation warps were used to transfer PET and CT contours from the staging scan to the RTP scan. Dices similarity coefficient (DSC) was used to assess the registration accuracy of staging-based GTVs following both registration methods with the GTVs delineated on the RTP PET/CT scan. RESULTS When the GTV(CT) delineated on the staging scan after both rigid registration and deformation was compared with the GTV(CT)on the RTP scan, a significant improvement in overlap (registration) using deformation was observed (mean DSC 0.66 for rigid registration and 0.82 for deformable registration, p = 0.008). A similar comparison for PET contours revealed no significant improvement in overlap with the use of deformable registration. CONCLUSIONS No consistent improvements in similarity measures were observed when deformable registration was used for transferring PET-based contours from a staging PET/CT. This suggests that currently the use of rigid registration remains the most appropriate method for RTP in NSCLC.


Medical Physics | 2016

WE‐AB‐202‐02: Incorporating Regional Ventilation Function in Predicting Radiation Fibrosis After Concurrent Chemoradiotherapy for Lung Cancer

F Lan; Jean Jeudy; S. Senan; J.R. van Sornsen de Koste; H Tseng; J Zhou; W D'Souza; H Zhang

PURPOSE To investigate the incorporation of pre-therapy regional ventilation function in predicting radiation fibrosis (RF) in stage III non-small-cell lung cancer (NSCLC) patients treated with concurrent thoracic chemoradiotherapy. METHODS 37 stage III NSCLC patients were retrospectively studied. Patients received one cycle of cisplatin-gemcitabine, followed by two to three cycles of cisplatin-etoposide concurrently with involved-field thoracic radiotherapy between 46 and 66 Gy (2 Gy per fraction). Pre-therapy regional ventilation images of the lung were derived from 4DCT via a density-change-based image registration algorithm with mass correction. RF was evaluated at 6-months post-treatment using radiographic scoring based on airway dilation and volume loss. Three types of ipsilateral lung metrics were studied: (1) conventional dose-volume metrics (V20, V30, V40, and mean-lung-dose (MLD)), (2) dose-function metrics (fV20, fV30, fV40, and functional mean-lung-dose (fMLD) generated by combining regional ventilation and dose), and (3) dose-subvolume metrics (sV20, sV30, sV40, and subvolume mean-lung-dose (sMLD) defined as the dose-volume metrics computed on the sub-volume of the lung with at least 60% of the quantified maximum ventilation status). Receiver operating characteristic (ROC) curve analysis and logistic regression analysis were used to evaluate the predictability of these metrics for RF. RESULTS In predicting airway dilation, the area under the ROC curve (AUC) values for (V20, MLD), (fV20, fMLD), and (sV20, and sMLD) were (0.76, 0.70), (0.80, 0.74) and (0.82, 0.80), respectively. The logistic regression p-values were (0.09, 0.18), (0.02, 0.05) and (0.004, 0.006), respectively. With regard to volume loss, the corresponding AUC values for these metrics were (0.66, 0.57), (0.67, 0.61) and (0.71, 0.69), and p-values were (0.95, 0.90), (0.43, 0.64) and (0.08, 0.12), respectively. CONCLUSION The inclusion of regional ventilation function improved predictability of radiation fibrosis. Dose-subvolume metrics provided a promising method for incorporating functional information into the conventional dose-volume parameters for outcome assessment.


Clinical Oncology | 2012

Defining Target Volumes for Stereotactic Ablative Radiotherapy of Early-stage Lung Tumours: A Comparison of Three-dimensional 18F-fluorodeoxyglucose Positron Emission Tomography and Four-dimensional Computed Tomography

G.G. Hanna; J.R. van Sornsen de Koste; Max Dahele; K.J. Carson; Cornelis J.A. Haasbeek; R. Migchielsen; A.R. Hounsell; Suresh Senan


International Journal of Radiation Oncology Biology Physics | 2001

Can elective nodal irradiation be omitted in stage III non-small cell lung cancer? An analysis of recurrences after sequential chemotherapy and “involved-field” radiotherapy to 70 gy

S. Senan; Jacobus A. Burgers; M.J. Samson; R.J. van Klaveren; Swie Swat Oei; J.R. van Sornsen de Koste; P. Voet; J.M. van Haarst; F.J. Lagerwaard; J. Van Meerbeeck


Medical Physics | 2016

Should regional ventilation function be considered during radiation treatment planning to prevent radiation‐induced complications?

Fujun Lan; Jean Jeudy; Suresh Senan; J.R. van Sornsen de Koste; W D'Souza; Huan‐Hsin Tseng; J Zhou; Hao Zhang


International Journal of Radiation Oncology Biology Physics | 2018

Incidence of High-Risk Radiologic Features in Patients Without Local Recurrence After Stereotactic Ablative Radiation Therapy for Early-Stage Non-Small Cell Lung Cancer

M.I. Ronden; J.R. van Sornsen de Koste; Carol Johnson; B.J. Slotman; Femke O.B. Spoelstra; Cornelis J.A. Haasbeek; G. Blom; E.M. Bongers; Andrew Warner; Aaron D. Ward; David A. Palma; S. Senan


Lung Cancer | 2000

The use of CT-simulation and digitally reconstructed radiographs (DRR's) in setup verification allows for smaller planning target volumes in lung cancer

S. Senan; J.R. van Sornsen de Koste; J. C. J. de Boer; B.J.M. Heijmen


International Journal of Radiation Oncology Biology Physics | 2005

Advantages of Respiration-Gated Radiotherapy for Stage III Lung Cancer

René W.M. Underberg; J.R. van Sornsen de Koste; B.J. Slotman; S. Senan


Strahlentherapie Und Onkologie | 2014

Semiautomated volumetric response evaluation as an imaging biomarker in superior sulcus tumors

C.G. Vos; Max Dahele; J.R. van Sornsen de Koste; S. Senan; I. Bahce; M.A. Paul; E. Thunnissen; Egbert F. Smit; K.J. Hartemink


International Journal of Radiation Oncology Biology Physics | 2012

Evaluating Digital Tomosynthesis (DTS) for Image-guided Stereotactic Lung Radiation Therapy

J.R. van Sornsen de Koste; Max Dahele; S. Senan; L. Van der Weide; B.J. Slotman; Wilko F.A.R. Verbakel

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S. Senan

VU University Medical Center

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B.J. Slotman

VU University Medical Center

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Max Dahele

VU University Medical Center

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Suresh Senan

VU University Medical Center

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Frank J. Lagerwaard

VU University Medical Center

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Johan P. Cuijpers

VU University Medical Center

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F.J. Lagerwaard

Erasmus University Rotterdam

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Femke O.B. Spoelstra

VU University Medical Center

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