Explainable AI meets Healthcare: A Study on Heart Disease Dataset
- URL: http://arxiv.org/abs/2011.03195v1
- Date: Fri, 6 Nov 2020 05:18:43 GMT
- Title: Explainable AI meets Healthcare: A Study on Heart Disease Dataset
- Authors: Devam Dave, Het Naik, Smiti Singhal, Pankesh Patel
- Abstract summary: The aim is to enlighten practitioners on the understandability and interpretability of explainable AI systems using a variety of techniques.
Our paper contains examples based on the heart disease dataset and elucidates on how the explainability techniques should be preferred to create trustworthiness.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: With the increasing availability of structured and unstructured data and the
swift progress of analytical techniques, Artificial Intelligence (AI) is
bringing a revolution to the healthcare industry. With the increasingly
indispensable role of AI in healthcare, there are growing concerns over the
lack of transparency and explainability in addition to potential bias
encountered by predictions of the model. This is where Explainable Artificial
Intelligence (XAI) comes into the picture. XAI increases the trust placed in an
AI system by medical practitioners as well as AI researchers, and thus,
eventually, leads to an increasingly widespread deployment of AI in healthcare.
In this paper, we present different interpretability techniques. The aim is
to enlighten practitioners on the understandability and interpretability of
explainable AI systems using a variety of techniques available which can be
very advantageous in the health-care domain. Medical diagnosis model is
responsible for human life and we need to be confident enough to treat a
patient as instructed by a black-box model. Our paper contains examples based
on the heart disease dataset and elucidates on how the explainability
techniques should be preferred to create trustworthiness while using AI systems
in healthcare.
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