Abstract

(1) Background: Recommendation algorithms have played a vital role in the prediction of personalized recommendation for clinical decision support systems (CDSSs). Machine learning methods are powerful tools for disease diagnosis. Unfortunately, they must deal with missing data, as this will result in data error and limit the potential patterns and features associated with obtaining a clinical decision; (2) Methods: Recent years, collaborative filtering (CF) have proven to be a valuable means of coping with missing data prediction. In order to address the challenge of missing data prediction and latent feature extraction, neighbor-based and latent features-based CF methods are presented for clinical disease diagnosis. The novel discriminative restricted Boltzmann machine (DRBM) model is proposed to extract the latent features, where the deep learning technique is adopted to analyze the clinical data; (3) Results: Proposed methods were compared to machine learning models, using two different publicly available clinical datasets, which has various types of inputs and different quantity of missing. We also evaluated the performance of our algorithm, using clinical datasets that were missing at random (MAR), which were missing at various degrees; and (4) Conclusions: The experimental results demonstrate that DRBM can effectively capture the latent features of real clinical data and exhibits excellent performance for predicting missing values and result classification.

Highlights

  • The clinical decision support systems as a practical tool is designed to take the full advantage of patient medical record data, thereby influencing the clinical decisions of doctors in key areas via data mining, and assist doctors in providing timely and correct decisions for patients [1,2]

  • Outcome the present exploration is on a smallcan scale, results, wegenerally have demonstrated the categorical of data clinical diagnostic datasets be according to the experimental results, we have demonstrated that the categorical outcome of clinical modelled as classification problems, and could be dealt with collaborative filtering (CF) methods, which is superior to the diagnostic datasets be modelled as classification problems, and could be dealt with CF methods, traditional machine can learning methods

  • Our experiments consistently demonstrated that CF can be effectively used in clinical decisions and risk prediction

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Summary

Introduction

The clinical decision support systems as a practical tool is designed to take the full advantage of patient medical record data, thereby influencing the clinical decisions of doctors in key areas via data mining, and assist doctors in providing timely and correct decisions for patients [1,2]. How to utilize patient medical record data effectively, helping doctors reduce the rates of misdiagnosis and missed diagnosis, has been one of the focuses clinical decision support systems (CDSSs) research [3]. Clinical diagnostic datasets, accompanied by such data features, need various interpolations for missing data, which lead to data standard errors caused by the data filling [8]. These data standard errors limit the ability to obtain potential patterns and implicit features of clinical decisions for traditional machine learning methods

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