Medical Informatics and Explainable AI

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Presentation transcript:

Medical Informatics and Explainable AI CERN openlab Summer Student Lectures Taghi Aliyev 23/07/2019

Taghi Aliyev, Summer Student Lectures Outline What do we mean with Medical Informatics? Areas of application Outstanding issues and open questions: Explainable AI, Trustability Data Set generation and curation Our projects Explainability as necessary piece for Machine Ethics (Taghi)  2nd half of this presentation BioDynaMo (Lukas) Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Medical Informatics Intersection between CS, IT, AI and Health care Many branches: Creation of patient Data Bases Engineering works on medical devices Robotic precision surgeries Data Analytics and model building Biological Simulations This talk: More Data Analytics and Machine Learning focus Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Areas of Application Examples of Medical Imagery Analysis Classification of Brain Tumor Segmentation in Ultrasound Images Skull Stripping in MR Images (Image on Right) Detection of Prostate Cancer from biopsy Identification of Breast Cancer in lymph nodes Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Areas of Application Knowledge Discovery and Data Mining Examples Prediction of clinical outcomes Survival Analysis Diagnosis Identification of biomarkers Neural Networks for biomarker identification for Alzheimer’s Population-studies Structural Variations in Genomes: DeepVariant Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Areas of Application Knowledge Discovery and Data Mining Examples Personalized Medicine cases: Analysis on Genome level for personalized drug development and usage Respiratory Diseases: Role of Proteomics Graph approaches: Causality Bayesian/Markov Networks Taghi Aliyev, Summer Student Lectures

Pitfalls and open questions Two aspects: Technical limitations Algorithmic limitations Technical limitations: Data set curation and generation Partially resolved with Transfer Learning Algorithmic Limitations Explainable AI, Machine Ethics  Rest of this talk Taghi Aliyev, Summer Student Lectures

Ethics and Sustainability Limitations, challenges, problems Limited negotiation powers in decision-making With Deep Learning and other recent ML-based systems Not all the outputs understood or explained Ethical challenges: Biased systems Unavailability of explanations or explicit correlations There will be talk on this in August  More announcements later Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Reasonable Inference Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Explainable AI Ongoing preference towards non-"black box" models A paradox with recent advances: Better models are available, however preferred to simpler models Explainability of the black box models Open topic Next necessary step in sustainability of Deep Learning models Error correction Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Explainable AI Tendencies towards non Deep Learning approaches Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Explainable AI Required characteristics Negotiate the inference Provide useful new insight from complex modelling techniques Meaningful human control over the systems Similar with scientific findings/hypothesis: If a scientist produces a new theory or finding, they need to prove it and explain it Same should be upheld for ML systems Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Explainable AI Twins UK Study together with King's College London A step towards interpretability and meaningful human control Detection of facial features in twins Initially heritability analysis Next clinical traits and disease symptoms Adaptive pipeline for deconvolution Based off the work from M. Zeiler (2014) Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Explainable AI Promising results Taghi Aliyev, Summer Student Lectures

Taghi Aliyev, Summer Student Lectures Conclusion Importance of Causal Reasoning Cornerstone for Explainable AI Make sure to understand the needs of a project Association-learning vs Explainability Other approaches: Mechanical Approaches for well-designed simulation studies More from Lukas right now! Taghi Aliyev, Summer Student Lectures