Classification of Malaria-Infected Cells using Convolutional Neural Networks

Katarina Mitrovic, Danijela Milošević
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引用次数: 5

Abstract

Malaria is a disease which, despite being present for over a century, still claims a significant number of lives every year. The advancement of artificial intelligence have opened the door to developing innovative methods in malaria treatment. Introducing machine learning approaches to this field can be beneficial in the disease prevention, detection, and therapy. In this work, convolutional neural networks for malaria detection are developed, based on the classification of thin blood smear images of the potentially infected cells. Input data was preprocessed using the image segmentation, file organization, image size standardization, color channel adjustment, and data splitting. Further, the proposed methodology included image conversion, network architecture defining, parameter tuning and network training. Various architectures of convolutional neural networks were developed and evaluated. In addition, multiple values of different network layer parameters were assessed. This study was implemented in Clojure programming language. Proposed network architecture includes two convolutional and pooling layers followed by activation functions, batch normalization and two linear layers. This convolutional neural network provided the best results and achieved an 82.7% accuracy. Furthermore, this paper proposes another network model with lightweight configuration and a slight accuracy decrease.
使用卷积神经网络对疟疾感染细胞进行分类
疟疾是一种疾病,尽管存在了一个多世纪,但每年仍夺去大量生命。人工智能的进步为开发疟疾治疗的创新方法打开了大门。将机器学习方法引入这一领域,对疾病的预防、检测和治疗都是有益的。在这项工作中,基于对潜在感染细胞的薄血涂片图像的分类,开发了用于疟疾检测的卷积神经网络。对输入数据进行图像分割、文件组织、图像尺寸标准化、颜色通道调整和数据分割等预处理。此外,所提出的方法包括图像转换、网络架构定义、参数调整和网络训练。开发和评估了各种卷积神经网络架构。此外,还评估了不同网络层参数的多个值。本研究采用Clojure编程语言实现。提出的网络结构包括两个卷积层和池化层,然后是激活函数、批归一化和两个线性层。该卷积神经网络提供了最好的结果,达到了82.7%的准确率。在此基础上,本文提出了另一种网络模型,该模型具有轻量级配置,且精度略有下降。
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