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122 Predicting progression of paediatric Chronic Kidney Disease using Machine Learning
0
Zitationen
19
Autoren
2026
Jahr
Abstract
improvement plans with the inclusion of relevant staff members, and sharing their innovative ideas for tacking HI.Next Steps 1) Health Inequalities QI team to work with the three clinical areas above on achieving the goals set within their improvement plans, sharing their achievements via the self-assessment portal as exemplars to follow, thereby creating a community of practice; 2) supporting all other departments who had completed the HI SASs to develop and implement their HI improvements; 3) reassess at 6 months; 4) embed into business as usual by incorporating the HI SAS into the GOSH Ward Accreditation Scheme during 2026.Conclusion Pan-Trust HI self-assessment has enabled the identification of gaps in service delivery related to HI, with tangible, realistic and achievable interventions now being implemented across the organisation.This not only reduces the impact of HI but actively promotes health equity for our patients and their families.
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