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Predicting Success in the Embryology Lab: The Use of Algorithmic Technologies in Knowledge Production

Geampana, Alina; Perrotta, Manuela

Authors

Manuela Perrotta



Abstract

This article analyzes local algorithmic practices resulting from the increased use of time-lapse (TL) imaging in fertility treatment. The data produced by TL technologies are expected to help professionals pick the best embryo for implantation. The emergence of TL has been characterized by promissory discourses of deeper embryo knowledge and expanded selection standardization, despite professionals having no conclusive evidence that TL improves pregnancy rates. Our research explores the use of TL tools in embryology labs. We pay special attention to standardization efforts and knowledge-creation facilitated through TL and its incorporated algorithms. Using ethnographic data from five UK clinical sites, we argue that knowledge generated through TL is contingent upon complex human–machine interactions that produce local uncertainties. Thus, algorithms do not simply add medical knowledge. Rather, they rearrange professional practice and expertise. Firstly, we show how TL changes lab routines and training needs. Secondly, we show that the human input TL requires renders the algorithm itself an uncertain and situated practice. This, in turn, raises professional questions about the algorithm’s authority in embryo selection. The article demonstrates the embedded nature of algorithmic knowledge production, thus pointing to the need for STS scholarship to further explore the locality of algorithms and AI.

Citation

Geampana, A., & Perrotta, M. (2023). Predicting Success in the Embryology Lab: The Use of Algorithmic Technologies in Knowledge Production. Science, Technology, & Human Values, 48(1), 212-233. https://doi.org/10.1177/01622439211057105

Journal Article Type Article
Acceptance Date Oct 19, 2021
Online Publication Date Nov 15, 2021
Publication Date 2023-01
Deposit Date Mar 5, 2024
Journal Science, Technology, & Human Values
Print ISSN 0162-2439
Electronic ISSN 1552-8251
Publisher SAGE Publications
Peer Reviewed Peer Reviewed
Volume 48
Issue 1
Pages 212-233
DOI https://doi.org/10.1177/01622439211057105
Keywords Human-Computer Interaction; Economics and Econometrics; Sociology and Political Science; Philosophy; Social Sciences (miscellaneous); Anthropology
Public URL https://durham-repository.worktribe.com/output/2310182