Prof Mihaela van der Schaar joining panel on oncology at ASCO2023
This Friday (2 June 2023), our director Prof Mihaela van der Schaar will be joining the panel on “From chip to bedside – Oncology in silico R&D” as part of …
This Friday (2 June 2023), our director Prof Mihaela van der Schaar will be joining the panel on “From chip to bedside – Oncology in silico R&D” as part of …
We introduce LEGATO, a hierarchical graph auto-encoder that learns a smaller, latent graph to dynamically aggregate information from multiple views.
SMC builds a new ensemble weighting existing models according to their likelihood to accurately represent a novel case. Based on our results, SMC is more robust and gives more accurate predictions than existing models.
The CCAIM researchers will publish 12 papers at ICML 2023, the leading international academic conference in machine learning.
Leadership Meet our directors, research engineers, and operational team You can find the Joint Steering Committee consisting of our academic and industrial leadership here.
This edition of the CCAIM AI Clinic will be held online in cooperation with the Revolutionizing Healthcare engagement program of the van der Schaar Lab Who is CCAIM? The Cambridge …
We are thrilled to announce the release of our latest software packages, specifically designed to enhance your use of machine learning technology in a wide range of healthcare topics (e.g. …
AutoPrognosis is an automated predictive modelling pipeline designed for clinical prognosis, leveraging state-of-the-art advances in automated machine learning to optimise ML pipelines, incorporate model explainability tools, and enable deployment of …
TemporAI is a Machine Learning-centric time-series library tailored for medicine, focusing on time-series prediction, time-to-event analysis, and counterfactual inference for individualised treatment effects. How is it unique? TemporAI offers a …
HyperImpute is a comprehensive library for handling missing data in your ML pipelines, simplifying the selection process of a data imputation algorithm and offering a range of novel algorithms compatible …
Synthcity is an open-source synthetic data generation library that outperforms rivals (YData, Gretel, SDV, etc.) in terms of compatible use cases and data modalities, offering solutions for privacy, data scarcity, …
A comprehensive collection of Machine Learning interpretability methods, offering users a reference to select the best-suited method for their needs, with a focus on providing insights into ML model predictions …
CCAIM Faculty members will present eight papers at the Artificial Intelligence and Statistics (AISTATS) conference, one of the most prominent annual gatherings of researchers at the intersection of artificial intelligence, machine …
A paper recently accepted for publication by PLOS Digital Health explores machine-learning based prognostic scores and their validity when applied to demographically different patient cohorts: the ‘external validity’. The publication …
Dr Alexander Gimson, member of the CCAIM faculty, talks about the impact of machine learning on transplantation medicine.
The Cambridge Centre for AI in Medicine will be represented at the Thirty-sixth Conference on Neural Information Processing Systems (NeurIPS 2022) with 10 papers accepted for publication and 4 papers presented at workshops. …
The inaugural CCAIM AI Clinic took place on 10 November 2022 – this was an in-person event exclusively for Cambridge based clinicians. The Cambridge Centre for AI in Medicine is …
This post refers to a newly published paper involving members of the van der Schaar Lab inside CCAIM. Find out more here. In their paper, Changhee Lee, Alexander Light, Evgeny …
The Cambridge Centre for AI in Medicine will be represented at the Thirty-ninth International Conference on Machine Learning (ICML 2022) with twelve papers accepted for publication. Of these papers, eleven have been chosen by the …
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