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Your search keyword '"Regina G. H. Beets-Tan"' showing total 25 results

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25 results on '"Regina G. H. Beets-Tan"'

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1. An automated deep learning pipeline for EMVI classification and response prediction of rectal cancer using baseline MRI: a multi-centre study

2. METhodological RadiomICs Score (METRICS): a quality scoring tool for radiomics research endorsed by EuSoMII

3. A European Society of Oncologic Imaging (ESOI) survey on the radiological assessment of response to oncologic treatments in clinical practice

4. Radiomic signatures from T2W and DWI MRI are predictive of tumour hypoxia in colorectal liver metastases

5. Predicting breast cancer types on and beyond molecular level in a multi-modal fashion

6. MRI anatomy of the rectum: key concepts important for rectal cancer staging and treatment planning

7. Multi-modal artificial intelligence for the combination of automated 3D breast ultrasound and mammograms in a population of women with predominantly dense breasts

8. Federated learning enables big data for rare cancer boundary detection

9. Retrospective evaluation of national MRI reporting quality for lateral lymph nodes in rectal cancer patients and concordance with prospective re-evaluation following additional training

10. A Deep Learning Framework with Explainability for the Prediction of Lateral Locoregional Recurrences in Rectal Cancer Patients with Suspicious Lateral Lymph Nodes

11. Factors affecting the value of diffusion-weighted imaging for identifying breast cancer patients with pathological complete response on neoadjuvant systemic therapy: a systematic review

12. Author Correction: Federated learning enables big data for rare cancer boundary detection

13. MRI-based clinical-radiomics model predicts tumor response before treatment in locally advanced rectal cancer

14. Response evaluation after neoadjuvant treatment for rectal cancer using modern MR imaging: a pictorial review

15. Development of a Prognostic AI-Monitor for Metastatic Urothelial Cancer Patients Receiving Immunotherapy

16. Prognostic Value of Deep Learning-Mediated Treatment Monitoring in Lung Cancer Patients Receiving Immunotherapy

17. Modern MR Imaging Technology in Rectal Cancer; There Is More Than Meets the Eye

18. Deep Learning for Fully-Automated Localization and Segmentation of Rectal Cancer on Multiparametric MR

19. Author Correction: Deep Learning for Fully-Automated Localization and Segmentation of Rectal Cancer on Multiparametric MR

21. Diffusion weighted imaging in patients with rectal cancer: Comparison between Gaussian and non-Gaussian models.

22. Optimised treatment of patients with enlarged lateral lymph nodes in rectal cancer: protocol of an international, multicentre, prospective registration study after extensive multidisciplinary training (LaNoReC)

23. A deep learning-based application for COVID-19 diagnosis on CT: The Imaging COVID-19 AI initiative.

24. The Apparent Diffusion Coefficient (ADC) is a useful biomarker in predicting metastatic colon cancer using the ADC-value of the primary tumor.

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