📚 Class Preparation
2024/25 Autumn Term
🗺️ Context
This week, we’ll do our second case study!
A field where AI/data has long been touted as a solution to every problem is medicine. Supervised learning techniques, in particular, seemed as if they would bring about huge benefits when it came to diagnosing patients more accurately, tailoring treatment regimens, etc… But, there was always the promise and there was clinical reality…When the pandemic happened, the good, the bad and the ugly sides of AI in medicine came to the fore. Many uncomfortable questions were brought forth and many lessons learned.
📖 Class Preparation
In preparation for this week’s case study, please read the following articles:
Mandatory readings
- Benaich, Nathan (2020) “AI has disappointed on Covid”. Financial Times – (Benaich 2020)
- Heaven, William Douglas (2021). “Hundreds of AI tools have been built to catch covid. None of them helped”. MIT Technology Review – (Heaven 2021)
- Callaway, Ewen (2023). “How AlphaFold and other AI tools could help us prepare for the next pandemic”. Nature– (Callaway 2023)
- Ono, Sachiko, and Goto, Tadahiro (2022). “Introduction to supervised machine learning in clinical epidemiology”. Annals of clinical epidemiology vol. 4,3 63-71. 1 Jul. 2022 – (Ono and Goto 2022)
- Nwanosike, Ezekwesiri Michael, Conway, Barbara R, Merchant, Hamid A and Hasan, Syed Shahzad (2022) “Potential applications and performance of machine learning techniques and algorithms in clinical practice: A systematic review”. International Journal of Medical Informatics, Volume 159, 2022, 104679, ISSN 1386-5056. –(Nwanosike et al. 2022)
📖 Recommended readings
Väänänen, Antti and Haataja, Keijo and Vehviläinen-Julkunen, Katri and Toivanen, Pekka. 2021. “AI in healthcare: A narrative review [version 2; peer review: 1 approved, 1 not approved]” F1000Research 10:6.
Wynants Laure, Van Calster Ben, Collins Gary S, Riley Richard D, Heinze Georg, Schuit Ewoud et al. 2020. “Prediction models for diagnosis and prognosis of covid-19: systematic review and critical appraisal” BMJ 369 :m1328.