Abstract

It was to explore the application of nursing defect management evaluation and deep learning in nursing process reengineering optimization. This study first selects the root cause analysis method to analyse the nursing defect management, then realizes the classification of data features according to the convolution neural network (CNN) in deep learning (DL) and uses the constructed training set and verification set to obtain the required plates and feature extraction. Based on statistical analysis and data mining, this study makes statistical analysis of nursing data from a macroperspective, improves Apriori algorithm through simulation, and analyses nursing data mining from a microperspective. The constructed deep learning model is used, CNN network training is conducted on the selected SVHN dataset, the required data types are classified, the data are analysed by using the improved Apriori algorithm, and nurses' knowledge of nursing process rules is investigated and analysed. The cognition of nursing staff on process optimization and their participation in training were analyzed, the defects in the nursing process were summarized, and the nursing process reengineering was analyzed. The results show that compared with Apriori algorithm, the running time difference of the improved Apriori algorithm is relatively small. With the increase of data recording times, the line trend of the improved algorithm gradually eases, the advantages gradually appear, and the efficiency of data processing is more obvious. The results showed that after the optimization of nursing process, the effect of long-term specialized nursing was significantly higher than that of long-term nursing. Health education was improved by 7.57%, clinical nursing was improved by 6.55%, ward management was improved by 9.85%, and service humanization was improved by 8.97%. In summary, the reoptimization of nursing process is conducive to reduce the defects in nursing. In the data analysis and rule generation based on deep learning network, the reoptimization of nursing process can provide reference for decision-making departments to improve long-term nursing, improve the quality and work efficiency of clinical nurses, and is worthy of clinical promotion.

Highlights

  • Medical and nursing defects refer to the behaviour of medical personnel in violation of medical and nursing regulations, department system, medical regulations, and general hospital health system in the process of patient treatment and nursing, which leads to some mistakes in nursing and disease treatment [1]

  • In the nursing process, according to the images obtained by the patient, the model shown in Figure 1 is used for classification, the feature classification is realized according to the convolution neural network (CNN) in deep learning (DL), and the required wood blocks and feature extraction are obtained by using the constructed training set and verification set according to the classification principle of image features in DL

  • This study shows that after the optimization of nursing process, health education is improved by 7.57%, clinical nursing is improved by 6.55%, and ward management is improved by 9.85%

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Summary

Introduction

In the work of reengineering medical and nursing management, the unreasonable content of improving the process is to reengineer the nursing process. After scientific and reasonable effective modification, combination, and improvement of the original working atmosphere and facilities, the medical and nursing work was fully improved [2]. Optimizing nursing reengineering mainly refers to taking patients as the center, strengthening basic nursing, comprehensively implementing the nursing responsibility system, reconstructing, integrating, reorganizing, and deleting the weak and hidden environment of the original workflow, effectively deepening the connotation of nursing specialty, minimizing the occurrence of medical accidents, and ensuring the effective improvement of the overall nursing service level [3].

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