Abstract

Increasing the growth of big data, particularly in healthcare-Internet of Things (IoT) and biomedical classes, tends to help patients by identifying the disease early through methods for the analysis of medical data. Hence, nanotechnology-based IOT biosensors play a significant role in the medical field. Problem. However, the consistency continues to decrease where missing data occurs in such medical data from nanotechnology-based IOT biosensors. Furthermore, each region has its own special features, which further lowers the accuracy of prediction. The proposed model initially reconstructs lost or partial data in order to address the challenge of handling the medical data structures with incomplete data. Methods. An adaptive architecture is proposed to enhance the computing capabilities to predict the disease automatically. The medical databases are managed by unpredictable environments. This optimized paradigm for diagnosis produces the fuzzy, genetically categorized decision tree algorithm. This work uses a normalized classifier namely fuzzy-based decision tree (FDT) algorithm for classifying the data collected via nanotechnology-based IOT biosensors, and this helps in the identification of nondeterministic instances from unstructured datasets relating to the medical diagnosis. The FDT algorithm is further enhanced by using genetic algorithms for effective classification of instances. Finally, the proposed system uses two larger datasets to verify the predictive precision. In order to describe a fuzzy decision tree algorithm based upon the fitness function value, a modified decision classification rule is used. The structure and unstructured databases are configured for processing. Results and Conclusions. This evaluation of test patterns helps to track the efficiency of FDT with optimized rules during the training and testing stages. The proposed method is validated against nanotechnology-based IOT biosensors data in terms of accuracy, sensitivity, specificity, andF-measure. The results of the simulation show that the proposed method achieves a higher rate of accuracy than the other methods. Other metrics relating to the model with and without feature selection show an improved sensitivity, specificity, andF-measure rate than the existing methods.

Highlights

  • As medical knowledge grows, the electronic health record (EHR) subsequently grows dramatically

  • Efficient techniques are employed in large data analytics to find insights, correlations, and cached patterns from input data collected from the nanotechnology-based Internet of Things (IoT) biosensors

  • The main contribution of the paper is as follows: (i) The work uses a normalized classifier namely the fuzzy-based decision tree (FDT) algorithm to identify the nondetermined instances relating to the medical diagnosis due to the unstructured nature of the datasets from nanotechnology-based IoT biosensors (ii) The genetic algorithm(GA) is used to improve the FDT algorithm’s classification rule collection (iii) The evaluation of test patterns helps to track the efficiency of FDT with optimized rules during the training and testing stages (iv) the proposed system uses two larger datasets to verify the likelihood of predictive precision

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Summary

Introduction

The electronic health record (EHR) subsequently grows dramatically. (i) The work uses a normalized classifier namely the fuzzy-based decision tree (FDT) algorithm to identify the nondetermined instances relating to the medical diagnosis due to the unstructured nature of the datasets from nanotechnology-based IoT biosensors (ii) The genetic algorithm(GA) is used to improve the FDT algorithm’s classification rule collection (iii) The evaluation of test patterns helps to track the efficiency of FDT with optimized rules during the training and testing stages (iv) the proposed system uses two larger datasets to verify the likelihood of predictive precision.

Basic Concept
Rule Optimization Using GA
Experimental Results and Discussion
Conclusion
Full Text
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