Now You See Me: Designing Responsible AI Dashboards for Early-Stage Health Innovation
Svitlana Surodina, Sinem G\"or\"uc\"u, Lili Golmohammadi, Emelia Delaney, Rita Borgo

TL;DR
This paper presents design principles for responsible AI dashboards tailored for early-stage health innovation, emphasizing stakeholder collaboration, organizational context, and ecosystem coordination to improve decision-making and accountability.
Contribution
It offers actionable guidelines for creating governance dashboards that support responsible AI development in healthTech startups and early-stage projects.
Findings
Structured design process improves dashboard effectiveness.
Stakeholder co-creation enhances relevance and usability.
Ecosystem coordination promotes diversity and scalability in health AI.
Abstract
Innovative HealthTech teams develop Artificial Intelligence (AI) systems in contexts where ethical expectations and organizational priorities must be balanced under severe resource constraints. While Responsible AI practices are expected to guide the design and evaluation of such systems, they frequently remain abstract or poorly aligned with the operational realities of early-stage innovation. At the ecosystem level, this misalignment disproportionately affects disadvantaged projects and founders, therefore limiting the diversity of problem-areas under consideration, solutions, stakeholder perspectives, and population datasets represented in AI-enabled healthcare systems. Visualization provides a practical mechanism for supporting decision-making across the AI lifecycle. When developed via a rigorous and collaborative design process, structured on domain knowledge and designed around…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Ethics and Social Impacts of AI · Data Visualization and Analytics
