A New Approach for Interpretability and Reliability in Clinical Risk Prediction: Acute Coronary Syndrome Scenario

10/15/2021
by   Francisco Valente, et al.
0

We intend to create a new risk assessment methodology that combines the best characteristics of both risk score and machine learning models. More specifically, we aim to develop a method that, besides having a good performance, offers a personalized model and outcome for each patient, presents high interpretability, and incorporates an estimation of the prediction reliability which is not usually available. By combining these features in the same approach we expect that it can boost the confidence of physicians to use such a tool in their daily activity. In order to achieve the mentioned goals, a three-step methodology was developed: several rules were created by dichotomizing risk factors; such rules were trained with a machine learning classifier to predict the acceptance degree of each rule (the probability that the rule is correct) for each patient; that information was combined and used to compute the risk of mortality and the reliability of such prediction. The methodology was applied to a dataset of patients admitted with any type of acute coronary syndromes (ACS), to assess the 30-days all-cause mortality risk. The performance was compared with state-of-the-art approaches: logistic regression (LR), artificial neural network (ANN), and clinical risk score model (Global Registry of Acute Coronary Events - GRACE). The proposed approach achieved testing results identical to the standard LR, but offers superior interpretability and personalization; it also significantly outperforms the GRACE risk model and the standard ANN model. The calibration curve also suggests a very good generalization ability of the obtained model as it approaches the ideal curve. Finally, the reliability estimation of individual predictions presented a great correlation with the misclassifications rate. Those properties may have a beneficial application in other clinical scenarios as well. [abridged]

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/15/2021

Personalized and Reliable Decision Sets: Enhancing Interpretability in Clinical Decision Support Systems

In this study, we present a novel clinical decision support system and d...
research
12/02/2017

Short-term Mortality Prediction for Elderly Patients Using Medicare Claims Data

Risk prediction is central to both clinical medicine and public health. ...
research
05/11/2018

Improved Predictive Models for Acute Kidney Injury with IDEAs: Intraoperative Data Embedded Analytics

Acute kidney injury (AKI) is a common and serious complication after a s...
research
08/02/2019

Mixed-Integer Optimization Approach to Learning Association Rules for Unplanned ICU Transfer

After admission to emergency department (ED), patients with critical ill...
research
06/15/2021

Improving the compromise between accuracy, interpretability and personalization of rule-based machine learning in medical problems

One of the key challenges when developing a predictive model is the capa...
research
12/15/2020

On the Importance of Diversity in Re-Sampling for Imbalanced Data and Rare Events in Mortality Risk Models

Surgical risk increases significantly when patients present with comorbi...
research
04/20/2021

Development of an accessible 10-year Digital CArdioVAscular (DiCAVA) risk assessment: a UK Biobank study

Background: Cardiovascular diseases (CVDs) are among the leading causes ...

Please sign up or login with your details

Forgot password? Click here to reset