Co-occurring gland angularity in localized subgraphs: predicting biochemical recurrence in intermediate-risk prostate cancer patients
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Automated Tubule Nuclei Quantification and Correlation with Oncotype DX risk categories in ER+ Breast Cancer Whole Slide ImagesAutomated analysis of co-localized protein expression in histologic sections of prostate cancer.Emerging Themes in Image Informatics and Molecular Analysis for Digital Pathology.Multi-Pass Adaptive Voting for Nuclei Detection in Histopathological Images.Image analysis and machine learning in digital pathology: Challenges and opportunities.Evaluating stability of histomorphometric features across scanner and staining variations: prostate cancer diagnosis from whole slide images.A deep learning based strategy for identifying and associating mitotic activity with gene expression derived risk categories in estrogen receptor positive breast cancers.Training a cell-level classifier for detecting basal-cell carcinoma by combining human visual attention maps with low-level handcrafted features.Discriminative Scale Learning (DiScrn): Applications to Prostate Cancer Detection from MRI and Needle Biopsies.A deep-learning classifier identifies patients with clinical heart failure using whole-slide images of H&E tissue.Tissue Phenomics for prognostic biomarker discovery in low- and intermediate-risk prostate cancer.Transcriptome analysis reveals a long non-coding RNA signature to improve biochemical recurrence prediction in prostate cancer.A Multi-scale U-Net for Semantic Segmentation of Histological Images from Radical Prostatectomies.Innovative Technologies Changing Cancer Treatment.Stable and discriminating features are predictive of cancer presence and Gleason grade in radical prostatectomy specimens: a multi-site studyIdentifying the morphologic basis for radiomic features in distinguishing different Gleason grades of prostate cancer on MRI: Preliminary findings
P2860
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P2860
Co-occurring gland angularity in localized subgraphs: predicting biochemical recurrence in intermediate-risk prostate cancer patients
description
2014 nî lūn-bûn
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2014 թուականին հրատարակուած գիտական յօդուած
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2014 թվականին հրատարակված գիտական հոդված
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2014年の論文
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2014年論文
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2014年論文
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2014年論文
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2014年論文
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2014年論文
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2014年论文
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name
Co-occurring gland angularity ...... -risk prostate cancer patients
@ast
Co-occurring gland angularity ...... -risk prostate cancer patients
@en
Co-occurring gland angularity ...... -risk prostate cancer patients
@nl
type
label
Co-occurring gland angularity ...... -risk prostate cancer patients
@ast
Co-occurring gland angularity ...... -risk prostate cancer patients
@en
Co-occurring gland angularity ...... -risk prostate cancer patients
@nl
prefLabel
Co-occurring gland angularity ...... -risk prostate cancer patients
@ast
Co-occurring gland angularity ...... -risk prostate cancer patients
@en
Co-occurring gland angularity ...... -risk prostate cancer patients
@nl
P2093
P2860
P3181
P1433
P1476
Co-occurring gland angularity ...... -risk prostate cancer patients
@en
P2093
Elaine Spangler
George Lee
John E Tomaszewski
Michael D Feldman
Natalie N C Shih
Sahirzeeshan Ali
Timothy Rebbeck
P2860
P304
P3181
P356
10.1371/JOURNAL.PONE.0097954
P407
P577
2014-01-01T00:00:00Z