Search

Your search keyword '"Harmon SA"' showing total 112 results

Search Constraints

Start Over You searched for: Author "Harmon SA" Remove constraint Author: "Harmon SA"
112 results on '"Harmon SA"'

Search Results

1. Intra- and interreader reproducibility of PI-RADSv2: A multireader study

2. An automated pheochromocytoma and paraganglioma lesion segmentation AI-model at whole-body 68 Ga- DOTATATE PET/CT.

3. External Validation of a Previously Developed Deep Learning-based Prostate Lesion Detection Algorithm on Paired External and In-House Biparametric MRI Scans.

4. Comparison of Transatlantic Recommendations for Prostate Gland Evaluation with MRI after Focal Therapy (TARGET) and Prostate Imaging after Focal Ablation (PI-FAB) for Detecting Recurrent Prostate Cancer at Prostate MRI.

5. Large Scale Comparative Analysis of Canine and Human Osteosarcomas Uncovers Conserved Clinically Relevant Tumor Microenvironment Subtypes.

6. AI-ADC: Channel and Spatial Attention-Based Contrastive Learning to Generate ADC Maps from T2W MRI for Prostate Cancer Detection.

7. The future of multimodal artificial intelligence models for integrating imaging and clinical metadata: a narrative review.

8. Automated Detection and Grading of Extraprostatic Extension of Prostate Cancer at MRI via Cascaded Deep Learning and Random Forest Classification.

9. Deep learning-based image quality assessment: impact on detection accuracy of prostate cancer extraprostatic extension on MRI.

10. Longitudinal analysis of the lung proteome reveals persistent repair months after mild to moderate COVID-19.

11. Reducing False-Positives Due to Urinary Stagnation in the Prostatic Urethra on 18 F-DCFPyL PSMA PET/CT With MRI.

12. Diagnosing Progression in Glioblastoma-Tackling a Neuro-Oncology Problem Using Artificial-Intelligence-Derived Volumetric Change over Time on Magnetic Resonance Imaging to Examine Progression-Free Survival in Glioblastoma.

13. Deep Learning-Based Detection and Classification of Bone Lesions on Staging Computed Tomography in Prostate Cancer: A Development Study.

14. Deep Learning-Based T2-Weighted MR Image Quality Assessment and Its Impact on Prostate Cancer Detection Rates.

15. Assessment of TROP2, CEACAM5 and DLL3 in metastatic prostate cancer: Expression landscape and molecular correlates.

17. Deep learning-based whole-body PSMA PET/CT attenuation correction utilizing Pix-2-Pix GAN.

18. Evaluation of a Cascaded Deep Learning-based Algorithm for Prostate Lesion Detection at Biparametric MRI.

20. Automated prostate gland segmentation in challenging clinical cases: comparison of three artificial intelligence methods.

21. Deep Learning-Based Interpretable AI for Prostate T2W MRI Quality Evaluation.

22. Evaluating Diagnostic Accuracy and Inter-reader Agreement of the Prostate Imaging After Focal Ablation Scoring System.

23. Localized high-risk prostate cancer harbors an androgen receptor low subpopulation susceptible to HER2 inhibition.

24. Immune determinants of CAR-T cell expansion in solid tumor patients receiving GD2 CAR-T cell therapy.

25. PI-RADS Version 2.0 Versus Version 2.1: Comparison of Prostate Cancer Gleason Grade Upgrade and Downgrade Rates From MRI-Targeted Biopsy to Radical Prostatectomy.

26. Quality of T2-weighted MRI re-acquisition versus deep learning GAN image reconstruction: A multi-reader study.

27. ASSESSMENT OF CELL SURFACE TARGETS IN METASTATIC PROSTATE CANCER: EXPRESSION LANDSCAPE AND MOLECULAR CORRELATES.

28. Comparison of MRI-Based Staging and Pathologic Staging for Predicting Biochemical Recurrence of Prostate Cancer After Radical Prostatectomy.

29. Is prostatic adenocarcinoma with cribriform architecture more difficult to detect on prostate MRI?

30. Evaluation of a Deep Learning-based Algorithm for Post-Radiotherapy Prostate Cancer Local Recurrence Detection Using Biparametric MRI.

31. Radiogenomic profiling of prostate tumors prior to external beam radiotherapy converges on a transcriptomic signature of TGF-β activity driving tumor recurrence.

32. Prospective Evaluation of PI-RADS Version 2.1 for Prostate Cancer Detection and Investigation of Multiparametric MRI-derived Markers.

33. Ipsilateral hemigland prostate biopsy may underestimate cancer burden in patients with unilateral mpMRI-visible lesions.

34. Predicting Outcomes of Indeterminate Bone Lesions on 18 F-DCFPyL PSMA PET/CT Scans in the Setting of High-Risk Primary or Recurrent Prostate Cancer.

35. The Low Rate of Adherence to Checklist for Artificial Intelligence in Medical Imaging Criteria Among Published Prostate MRI Artificial Intelligence Algorithms.

36. Development of a 3D CNN-based AI Model for Automated Segmentation of the Prostatic Urethra.

37. A Cascaded Deep Learning-Based Artificial Intelligence Algorithm for Automated Lesion Detection and Classification on Biparametric Prostate Magnetic Resonance Imaging.

38. Prostate-Specific Membrane Antigen Is a Biomarker for Residual Disease following Neoadjuvant Intense Androgen Deprivation Therapy in Prostate Cancer.

39. Deep learning-based artificial intelligence for prostate cancer detection at biparametric MRI.

40. Clinical Application of Artificial Intelligence in Positron Emission Tomography: Imaging of Prostate Cancer.

41. Nascent Prostate Cancer Heterogeneity Drives Evolution and Resistance to Intense Hormonal Therapy.

42. Prognostic Features of Biochemical Recurrence of Prostate Cancer Following Radical Prostatectomy Based on Multiparametric MRI and Immunohistochemistry Analysis of MRI-guided Biopsy Specimens.

43. Magnetic Resonance Imaging-Targeted and Systematic Biopsy for Detection of Grade Progression in Patients on Active Surveillance for Prostate Cancer.

44. Quantitative Characterization of the Prostatic Urethra Using MRI: Implications for Lower Urinary Tract Symptoms in Patients with Benign Prostatic Hyperplasia.

45. Reply by Authors.

46. Changes in Magnetic Resonance Imaging Using the Prostate Cancer Radiologic Estimation of Change in Sequential Evaluation Criteria to Detect Prostate Cancer Progression for Men on Active Surveillance.

47. Multi-Domain Image Completion for Random Missing Input Data.

48. High throughput assessment of biomarkers in tissue microarrays using artificial intelligence: PTEN loss as a proof-of-principle in multi-center prostate cancer cohorts.

49. Quality of Prostate MRI: Is the PI-RADS Standard Sufficient?

50. Sequential Prostate Magnetic Resonance Imaging in Newly Diagnosed High-risk Prostate Cancer Treated with Neoadjuvant Enzalutamide is Predictive of Therapeutic Response.

Catalog

Books, media, physical & digital resources