Будь ласка, використовуйте цей ідентифікатор, щоб цитувати або посилатися на цей матеріал: https://dspace.uzhnu.edu.ua/jspui/handle/lib/66555
Повний запис метаданих
Поле DCЗначенняМова
dc.contributor.authorBabichev, Sergii-
dc.contributor.authorLiakh, Igor-
dc.contributor.authorMorokhovych, Vasyl-
dc.contributor.authorHoncharuk, Andrii-
dc.contributor.authorBalanda, Anatolii-
dc.contributor.authorZaitsev, Oleksandr-
dc.date.accessioned2024-10-31T11:14:37Z-
dc.date.available2024-10-31T11:14:37Z-
dc.date.issued2023-11-19-
dc.identifier.citationApplying deep learning techniques, such as convolutional or recurrent neural networks, to process gene expression data for developing complex disease diagnostic systems is one of modern bioinformatics's current focuses. Deep learning algorithms can identify specific patterns in the hierarchical representation of data and craft distinct functions that allow for precise identification of the subjects being studied. In this paper, we present our research findings on applying a convolutional neural network (CNN) in diagnosing various types of cancer based on gene expression data. The experimental data were sourced from The Cancer Genome Atlas (TCGA) and comprised 3269 samples. These samples can be categorized into nine classes based on the type of cancer. We introduced an ordered search-by-grid algorithm to pinpoint the optimal set of hyperparameters for the CNN. We assessed the model's efficacy using classification quality metrics, considering type I and II errors. Furthermore, we introduced an integrated F1-score index, drawing from the Harrington desirability function. The obtained results demonstrate the high efficacy of our proposed approach in diagnosing cancer based on gene expression data. The simulation results have shown that the single-layer CNN is more efficient for this type of data by all classification quality criteria. The number of correctly identified samples was 955 out of 981. The classification accuracy was 97.3%. Keywords 1 Gene expression profiles, cancer disease, Harrington desirability function, convolution neural network, classification quality criteriauk
dc.identifier.issn1613-0073-
dc.identifier.urihttps://dspace.uzhnu.edu.ua/jspui/handle/lib/66555-
dc.descriptionApplying deep learning techniques, such as convolutional or recurrent neural networks, to process gene expression data for developing complex disease diagnostic systems is one of modern bioinformatics's current focuses. Deep learning algorithms can identify specific patterns in the hierarchical representation of data and craft distinct functions that allow for precise identification of the subjects being studied. In this paper, we present our research findings on applying a convolutional neural network (CNN) in diagnosing various types of cancer based on gene expression data. The experimental data were sourced from The Cancer Genome Atlas (TCGA) and comprised 3269 samples. These samples can be categorized into nine classes based on the type of cancer. We introduced an ordered search-by-grid algorithm to pinpoint the optimal set of hyperparameters for the CNN. We assessed the model's efficacy using classification quality metrics, considering type I and II errors. Furthermore, we introduced an integrated F1-score index, drawing from the Harrington desirability function. The obtained results demonstrate the high efficacy of our proposed approach in diagnosing cancer based on gene expression data. The simulation results have shown that the single-layer CNN is more efficient for this type of data by all classification quality criteria. The number of correctly identified samples was 955 out of 981. The classification accuracy was 97.3%.uk
dc.description.abstractApplying deep learning techniques, such as convolutional or recurrent neural networks, to process gene expression data for developing complex disease diagnostic systems is one of modern bioinformatics's current focuses. Deep learning algorithms can identify specific patterns in the hierarchical representation of data and craft distinct functions that allow for precise identification of the subjects being studied. In this paper, we present our research findings on applying a convolutional neural network (CNN) in diagnosing various types of cancer based on gene expression data. The experimental data were sourced from The Cancer Genome Atlas (TCGA) and comprised 3269 samples. These samples can be categorized into nine classes based on the type of cancer. We introduced an ordered search-by-grid algorithm to pinpoint the optimal set of hyperparameters for the CNN. We assessed the model's efficacy using classification quality metrics, considering type I and II errors. Furthermore, we introduced an integrated F1-score index, drawing from the Harrington desirability function. The obtained results demonstrate the high efficacy of our proposed approach in diagnosing cancer based on gene expression data. The simulation results have shown that the single-layer CNN is more efficient for this type of data by all classification quality criteria. The number of correctly identified samples was 955 out of 981. The classification accuracy was 97.3%.uk
dc.language.isoenuk
dc.publisherInternational Conference on Informatics & Data-Driven Medicineuk
dc.relation.ispartofseriesIDDM;3609-
dc.subjectApplying Convolutional Neural Network for Cancer Disease Diagnosis Based on Gene Expression Datauk
dc.subjectGene expression profiles, cancer disease, Harrington desirability function, convolution neural network, classification quality criteriauk
dc.titleApplying Convolutional Neural Network for Cancer Disease Diagnosis Based on Gene Expression Datauk
dc.typeTextuk
dc.pubTypeТези до статтіuk
Розташовується у зібраннях:Наукові публікації кафедри інформатики та фізико-математичних дисциплін

Файли цього матеріалу:
Файл Опис РозмірФормат 
paper5.pdfStattja2.15 MBAdobe PDFПереглянути/Відкрити


Усі матеріали в архіві електронних ресурсів захищені авторським правом, всі права збережені.