Litcius/Paper detail

Low-Power Analog Integrated Architecture of the Voting Classification Algorithm for Diabetes Disease Prediction

Vassilis Alimisis, Charis Aletraris, Nikolaos P. Eleftheriou, Emmanouil Anastasios Serlis, Alex Pappachen James, Paul P. Sotiriadis

2024IEEE Transactions on Biomedical Circuits and Systems32 citationsDOI

Abstract

A low-power ( 600nW), fully analog integrated architecture for a voting classification algorithm is introduced. It can effectively handle multiple-input features, maintaining exceptional levels of accuracy and with very low power consumption. The proposed architecture is based on a versatile Voting algorithm that selectively incorporates one of three key classification models: Bayes or Centroid, or, the Learning Vector Quantization model; all of which are implemented using Gaussian-likelihood and Euclidean distance function circuits, as well as a current comparison circuit. To evaluate the proposed architecture, a comprehensive comparison with popular analog classifiers is performed, using real-life diabetes dataset. All model architectures were trained using Python and compared with the software-based classifiers. The circuit implementations were performed using the TSMC nm CMOS process technology and the Cadence IC Suite was utilized for the design, schematic and post-layout simulations. The proposed classifiers achieved sensitivity of and specificity of .

Topics & Concepts

VotingComputer sciencePower (physics)ArchitectureAlgorithmArtificial intelligenceMachine learningElectronic engineeringEngineeringPhysicsPolitical scienceVisual artsPoliticsLawArtQuantum mechanicsSentiment Analysis and Opinion MiningInternet Traffic Analysis and Secure E-voting