Original title: Systémy na subkontinentu: Data, moc a etika lékařského strojového učení v Indii
Translated title: Systems in the subcontinent: Data, power, and the ethics of medical machine learning in India
Authors: Jayadeva, Smera ; Schottli, Jivanta (advisor) ; Prina, Federica (referee)
Document type: Master’s theses
Year: 2021
Language: eng
Abstract: Absract The disruptive effects of the Fourth Industrial Revolution (IR4) have the capacity to rapidly alter the course of India's social and economic progress. For the healthcare sector, plagued by poor infrastructure and latency, advances in big data computing and Machine Learning (ML) can have a transformative impact. However, in a socio-political landscape marred by historic hierarchies of exclusion and disparity, the data-driven technology of ML may serve to mechanise and automate social divergence based on class, caste, sex, religion or region. The research frames the issue of medical ML in India as one of lethal biases and data privacy. Through an analysis of the two, the ecosystem of such technology has been brought to light. As instances of bias in ML systems reveal more about social hierarchy and discrimination than they do technological prowess, the dissertation aims to evaluate the ethical dimensions of medical ML in India. Technology is found to not only mediate the actions of individuals but also power dynamics of human and nonhuman actants within the social whole. Notwithstanding the challenges of integrating medical ML in India, the research highlights the ethics of design and the ethics of use to ameliorate the risks of machines with lethal consequences. With a focus on the Indian subaltern,...

Institution: Charles University Faculties (theses) (web)
Document availability information: Available in the Charles University Digital Repository.
Original record: http://hdl.handle.net/20.500.11956/150496

Permalink: http://www.nusl.cz/ntk/nusl-451929


The record appears in these collections:
Universities and colleges > Public universities > Charles University > Charles University Faculties (theses)
Academic theses (ETDs) > Master’s theses
 Record created 2021-10-10, last modified 2024-01-26


No fulltext
  • Export as DC, NUŠL, RIS
  • Share