New developments in artifical intelligence dr. Marc B. I

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New developments in artifical intelligence dr. Marc B. I New developments in artifical intelligence dr. Marc B.I. Lobbes, MD, PhD, EBBI Parkstad Mamma Symposium Heerlen – 17 mei 2019

New developments in artificial intelligence dr. Marc B. I New developments in artificial intelligence dr. Marc B.I. Lobbes, MD, PhD, EBBI Parkstad Mamma Symposium Heerlen – 17 mei 2019

DEEP LEARNING RADIOMICS For now…two important terms in AI and Radiology DEEP LEARNING RADIOMICS

Deep artificial neural machine learning networks? ARTIFICIAL INTELLIGENCE (AI) Any technique which enables computers to mimic human behavior MACHINE LEARNING (ML) A subset of AI techniques which use statistical methods to enable machines to improve with experience DEEP LEARNING A subset of ML which makes the computation of multi-layer neural networks feasible

Deep learning and image recognition / classification

Top rankings of ImageNet per year

Neural networks

Convolutional neural networks

Deep learning in ultrasound of breast lesions Ciritsis A, et al. European Radiology 2019; Epub

Deep learning to classify breast MRI lesions Herent P, et al. Diagn Interv Imaging 2019; 100: 219-225

Radiomics - principle

Radiomics to classify breast lesions on mammography Mao N, et al. J Am Coll Radiol 2019; 16: 485-491

We’ve only just begun…. Detection of breast cancer in early stage or when clinically relevant Diagnosis of breast lesions: malignant versus benign Treatment response monitoring Workflow efficiency Quality control protocols

Contact information dr. Marc B.I. Lobbes, MD, PhD, EBBI Maastricht UMC+, dep. Radiology and NM Per July 1st: Zuyderland Medical Center, dep. Radiology m.lobbes@zuyderland.nl