Abstract:
Peritoneal dialysis (PD) removes waste products from blood when the kidney is malfunctioned. Since there is no clear criterion for PD recommendation for patients with kid...Show MoreMetadata
Abstract:
Peritoneal dialysis (PD) removes waste products from blood when the kidney is malfunctioned. Since there is no clear criterion for PD recommendation for patients with kidney disease, existing machine learning models (ML), which rely on credible decision criterion, are ineffective in making PD eligibility decisions, especially when the correlated traits or indicators (patterns) inherent in the PD data are diverse and subtle. Furthermore, the lack of interpretable transparency in traditional ML also weakens the credibility of the decision they produce. Hence, an in-depth knowledge of the patients’ characteristics is needed to render a clearer picture of the decision-making process and model to detect the rare PD eligibility cases. In this paper, we extend our previous work (Attribute-Value-Association Discovery and Disentanglement (ADD)), to an extended ADD for PD data analysis (PD-ADD) to overcome these problems. We show that PD-ADD is able to discover association patterns of patient profiles and symptoms to reveal PD characteristics and detect eligible rare cases. Experimental results show that PDADD is much superior to existing unsupervised clustering (with accuracy of 89.87% vs 73.37% of K-Means). It also enables straightforward interpretation of the underlying relations of patient characteristics in an unsupervised setting.
Date of Conference: 16-19 December 2020
Date Added to IEEE Xplore: 13 January 2021
ISBN Information: