• Skip to main content
  • Skip to header right navigation
  • Skip to site footer
CCAIM

CCAIM

Novel AI to transform healthcare

  • Home
  • About
    • Leadership
    • Joint Steering Committee
    • Independent Scientific Advisory Board
    • Visitors
    • Vacancies
  • Research
    • Papers
    • Breakthroughs
    • Demonstrators
    • Research Update: COVID-19
    • Blog
  • News
    • Latest News
    • COVID-19 News
  • Events
    • Seminar Series
    • WeCREATE
    • Inaugural Event
  • Summer School
    • Program
    • Topics
    • Speakers
    • Industry
    • Participate
    • FAQ
  • Get involved
    • Collaborate
    • PhD Programmes
    • Partners
  • Contact

Papers Archive: Next-Generational Clinical Trials

2022
2021

SDF-Bayes: Cautious Optimism in Safe Dose-Finding Clinical Trials with Drug Combinations and Heterogeneous Patient Groups (AISTATS, 2021)

2020

Robust Recursive Partitioning for Heterogeneous Treatment Effects with Uncertainty Quantification (NeurIPS, 2020)

Learning for Dose Allocation in Adaptive Clinical Trials with Safety Constraints (ICML, 2020)

Machine learning for clinical trials in the era of COVID-19 (Statistics in Biopharmaceutical Research – Special Issue on Covid-19, July 2020)

Contextual Constrained Learning for Dose-Finding Clinical Trials (AISTATS, 2020)

2019

Sequential Patient Recruitment and Allocation for Adaptive Clinical Trials (AISTATS, 2019)

Navigation

Home

News

About

University of Cambridge

  • University A-Z
  • Contact the University
  • Accessibility
  • Data Protection
  • Terms and conditions

Newsletter

Sign-up for updates on our research.

Follow us

  • Twitter
  • LinkedIn
  • YouTube

Copyright © 2022 CCAIM

Return to top

We are using cookies to give you the best experience on our website.

You can find out more about which cookies we are using or switch them off in settings.

CCAIM
Privacy Overview

This website uses cookies so that we can provide you with the best user experience possible. Cookie information is stored in your browser and performs functions such as recognising you when you return to our website and helping our team to understand which sections of the website you find most interesting and useful.

Strictly Necessary Cookies

Strictly Necessary Cookie should be enabled at all times so that we can save your preferences for cookie settings.

If you disable this cookie, we will not be able to save your preferences. This means that every time you visit this website you will need to enable or disable cookies again.

3rd Party Cookies

This website uses Google Analytics to collect anonymous information such as the number of visitors to the site, and the most popular pages.

Keeping this cookie enabled helps us to improve our website.

Please enable Strictly Necessary Cookies first so that we can save your preferences!