A feel for the data: from sensory to algorithmic prediction in critical car
Egenis seminar (hybrid) with Dr Catherine Montgomery (University of Edinburgh)
A feel for the data: from sensory to algorithmic prediction in critical care
As machine learning algorithms move into the everyday routines of acute medicine, critical care is emerging as a key site where sensory, embodied and computational ways of knowing meet. Bedside work in the ICU has long relied on clinicians’ cultivated feel for patients’ trajectories: attunements to breathing patterns, skin tone, trace sounds, and subtle shifts in affect or physiology. Today, these forms of expertise encounter growing expectations that large streams of monitor data, cleaned, curated, modelled and repurposed, can be transformed into predictive tools capable of guiding intervention. Commercial systems based on de-identified vital-sign datasets are already in circulation, and others are in development. Yet the introduction of such prediction models raises questions about how these so-called ‘digital solutions’ sit alongside the socio-material relations that make intensive care possible, and how clinicians might integrate (or resist) them in decision-making.
Drawing on an ongoing ethnography that moves between the clinical world of the ICU and the academic world of medical data science, this talk explores how prediction is crafted and contested in practice. Following healthcare practitioners, data scientists, and ‘clinicians who code’, I examine the shifting practices of care as they become newly mediated by data infrastructures, analytic pipelines, and the promise of healthcare AI. Drawing on the STS scholarship on care, I analyse how different logics - from efficiency to intuition – are negotiated in the data-patient assemblage. In doing so, I argue that the future of algorithmic medicine cannot be understood without attending to the embodied, affective and relational labour that continues to underpin clinical judgement, and to the forms of care that data work itself demands.
Venue: Byrne House, University of Exeter (spaces limited)
Virtual: via Zoom
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Egenis seminar (hybrid) with Dr Catherine Montgomery (University of Edinburgh)
A feel for the data: from sensory to algorithmic prediction in critical care
As machine learning algorithms move into the everyday routines of acute medicine, critical care is emerging as a key site where sensory, embodied and computational ways of knowing meet. Bedside work in the ICU has long relied on clinicians’ cultivated feel for patients’ trajectories: attunements to breathing patterns, skin tone, trace sounds, and subtle shifts in affect or physiology. Today, these forms of expertise encounter growing expectations that large streams of monitor data, cleaned, curated, modelled and repurposed, can be transformed into predictive tools capable of guiding intervention. Commercial systems based on de-identified vital-sign datasets are already in circulation, and others are in development. Yet the introduction of such prediction models raises questions about how these so-called ‘digital solutions’ sit alongside the socio-material relations that make intensive care possible, and how clinicians might integrate (or resist) them in decision-making.
Drawing on an ongoing ethnography that moves between the clinical world of the ICU and the academic world of medical data science, this talk explores how prediction is crafted and contested in practice. Following healthcare practitioners, data scientists, and ‘clinicians who code’, I examine the shifting practices of care as they become newly mediated by data infrastructures, analytic pipelines, and the promise of healthcare AI. Drawing on the STS scholarship on care, I analyse how different logics - from efficiency to intuition – are negotiated in the data-patient assemblage. In doing so, I argue that the future of algorithmic medicine cannot be understood without attending to the embodied, affective and relational labour that continues to underpin clinical judgement, and to the forms of care that data work itself demands.
Venue: Byrne House, University of Exeter (spaces limited)
Virtual: via Zoom
Data Protection and Privacy
- To aid organisation of this event, attendee information may be shared with relevant staff in the University e.g. a list of attendees could be provided to the University host, guest speaker.
- We will store your information securely, so that we can communicate to you about the event (e.g. cancellation of event, changes to the itinerary, a satisfaction survey).
- We delete our access to personal information on Eventbrite after 6 months.
- More information on the University’s privacy policies can be found here.
- For more information on Eventbrite’s own privacy policy, please visit this page.
Good to know
Highlights
- 1 hour 45 minutes
- In person
Location
Byrne House
Saint German's Road
Exeter EX4 4PJ
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