about
Variables with time-varying effects and the Cox model: some statistical concepts illustrated with a prognostic factor study in breast cancerMolecular apocrine differentiation is a common feature of breast cancer in patients with germline PTEN mutations.MED12 alterations in both human benign and malignant uterine soft tissue tumors.An array CGH based genomic instability index (G2I) is predictive of clinical outcome in breast cancer and reveals a subset of tumors without lymph node involvement but with poor prognosisValidation of death prediction after breast cancer relapses using joint models.Identification of typical medullary breast carcinoma as a genomic sub-group of basal-like carcinomas, a heterogeneous new molecular entity.Comprehensive prognostic analysis in breast cancer integrating clinical, tumoral, micro-environmental and immunohistochemical criteriaThe Role of Sentinel Lymph Node Biopsy and Factors Associated with Invasion in Extensive DCIS of the Breast Treated by Mastectomy: The Cinnamome Prospective Multicenter StudyWhen will more useful predictive factors be ready for use?Epithelial atypia in biopsies performed for microcalcifications. practical considerations about 2,833 serially sectioned surgical biopsies with a long follow-up.A whole-genome sequence and transcriptome perspective on HER2-positive breast cancersPrognostic and predictive value of centrally reviewed Ki-67 labeling index in postmenopausal women with endocrine-responsive breast cancer: results from Breast International Group Trial 1-98 comparing adjuvant tamoxifen with letrozole.Immunophenotypic and genomic characterization of papillary carcinomas of the breast.Breast cancer genome and transcriptome integration implicates specific mutational signatures with immune cell infiltration.Standardization of pathologic evaluation and reporting of postneoadjuvant specimens in clinical trials of breast cancer: recommendations from an international working group.
P50
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P50
description
onderzoeker
@nl
name
Gaëtan MacGrogan
@ast
Gaëtan MacGrogan
@en
Gaëtan MacGrogan
@sl
type
label
Gaëtan MacGrogan
@ast
Gaëtan MacGrogan
@en
Gaëtan MacGrogan
@sl
prefLabel
Gaëtan MacGrogan
@ast
Gaëtan MacGrogan
@en
Gaëtan MacGrogan
@sl