2 datasets found
  1. f

    Negative sample validation values.

    • plos.figshare.com
    xlsx
    Updated Nov 15, 2024
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    Negative sample validation values. [Dataset]. https://plos.figshare.com/articles/dataset/Negative_sample_validation_values_/27615712
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Nov 15, 2024
    Dataset provided by
    PLOS Neglected Tropical Diseases
    Authors
    Carles Rubio Maturana; Allisson Dantas de Oliveira; Francesc Zarzuela; Edurne Ruiz; Elena Sulleiro; Alejandro Mediavilla; Patricia Martínez-Vallejo; Sergi Nadal; Tomàs Pumarola; Daniel López-Codina; Alberto Abelló; Elisa Sayrol; Joan Joseph-Munné
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    BackgroundUrogenital schistosomiasis is considered a Neglected Tropical Disease (NTD) by the World Health Organization (WHO). It is estimated to affect 150 million people worldwide, with a high relevance in resource-poor settings of the African continent. The gold-standard diagnosis is still direct observation of Schistosoma haematobium eggs in urine samples by optical microscopy. Novel diagnostic techniques based on digital image analysis by Artificial Intelligence (AI) tools are a suitable alternative for schistosomiasis diagnosis.MethodologyDigital images of 24 urine sediment samples were acquired in non-endemic settings. S. haematobium eggs were manually labeled in digital images by laboratory professionals and used for training YOLOv5 and YOLOv8 models, which would achieve automatic detection and localization of the eggs. Urine sediment images were also employed to perform binary classification of images to detect erythrocytes/leukocytes with the MobileNetv3Large, EfficientNetv2, and NasNetLarge models. A robotized microscope system was employed to automatically move the slide through the X-Y axis and to auto-focus the sample.ResultsA total number of 1189 labels were annotated in 1017 digital images from urine sediment samples. YOLOv5x training demonstrated a 99.3% precision, 99.4% recall, 99.3% F-score, and 99.4% mAP0.5 for S. haematobium detection. NasNetLarge has an 85.6% accuracy for erythrocyte/leukocyte detection with the test dataset. Convolutional neural network training and comparison demonstrated that YOLOv5x for the detection of eggs and NasNetLarge for the binary image classification to detect erythrocytes/leukocytes were the best options for our digital image database.ConclusionsThe development of low-cost novel diagnostic techniques based on the detection and identification of S. haematobium eggs in urine by AI tools would be a suitable alternative to conventional microscopy in non-endemic settings. This technical proof-of-principle study allows laying the basis for improving the system, and optimizing its implementation in the laboratories.

  2. f

    Training dataset configuration.

    • plos.figshare.com
    txt
    Updated Nov 15, 2024
    Share
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    Carles Rubio Maturana; Allisson Dantas de Oliveira; Francesc Zarzuela; Edurne Ruiz; Elena Sulleiro; Alejandro Mediavilla; Patricia Martínez-Vallejo; Sergi Nadal; Tomàs Pumarola; Daniel López-Codina; Alberto Abelló; Elisa Sayrol; Joan Joseph-Munné (2024). Training dataset configuration. [Dataset]. http://doi.org/10.1371/journal.pntd.0012614.s001
    Explore at:
    txtAvailable download formats
    Dataset updated
    Nov 15, 2024
    Dataset provided by
    PLOS Neglected Tropical Diseases
    Authors
    Carles Rubio Maturana; Allisson Dantas de Oliveira; Francesc Zarzuela; Edurne Ruiz; Elena Sulleiro; Alejandro Mediavilla; Patricia Martínez-Vallejo; Sergi Nadal; Tomàs Pumarola; Daniel López-Codina; Alberto Abelló; Elisa Sayrol; Joan Joseph-Munné
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    BackgroundUrogenital schistosomiasis is considered a Neglected Tropical Disease (NTD) by the World Health Organization (WHO). It is estimated to affect 150 million people worldwide, with a high relevance in resource-poor settings of the African continent. The gold-standard diagnosis is still direct observation of Schistosoma haematobium eggs in urine samples by optical microscopy. Novel diagnostic techniques based on digital image analysis by Artificial Intelligence (AI) tools are a suitable alternative for schistosomiasis diagnosis.MethodologyDigital images of 24 urine sediment samples were acquired in non-endemic settings. S. haematobium eggs were manually labeled in digital images by laboratory professionals and used for training YOLOv5 and YOLOv8 models, which would achieve automatic detection and localization of the eggs. Urine sediment images were also employed to perform binary classification of images to detect erythrocytes/leukocytes with the MobileNetv3Large, EfficientNetv2, and NasNetLarge models. A robotized microscope system was employed to automatically move the slide through the X-Y axis and to auto-focus the sample.ResultsA total number of 1189 labels were annotated in 1017 digital images from urine sediment samples. YOLOv5x training demonstrated a 99.3% precision, 99.4% recall, 99.3% F-score, and 99.4% mAP0.5 for S. haematobium detection. NasNetLarge has an 85.6% accuracy for erythrocyte/leukocyte detection with the test dataset. Convolutional neural network training and comparison demonstrated that YOLOv5x for the detection of eggs and NasNetLarge for the binary image classification to detect erythrocytes/leukocytes were the best options for our digital image database.ConclusionsThe development of low-cost novel diagnostic techniques based on the detection and identification of S. haematobium eggs in urine by AI tools would be a suitable alternative to conventional microscopy in non-endemic settings. This technical proof-of-principle study allows laying the basis for improving the system, and optimizing its implementation in the laboratories.

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Negative sample validation values. [Dataset]. https://plos.figshare.com/articles/dataset/Negative_sample_validation_values_/27615712

Negative sample validation values.

Related Article
Explore at:
xlsxAvailable download formats
Dataset updated
Nov 15, 2024
Dataset provided by
PLOS Neglected Tropical Diseases
Authors
Carles Rubio Maturana; Allisson Dantas de Oliveira; Francesc Zarzuela; Edurne Ruiz; Elena Sulleiro; Alejandro Mediavilla; Patricia Martínez-Vallejo; Sergi Nadal; Tomàs Pumarola; Daniel López-Codina; Alberto Abelló; Elisa Sayrol; Joan Joseph-Munné
License

Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically

Description

BackgroundUrogenital schistosomiasis is considered a Neglected Tropical Disease (NTD) by the World Health Organization (WHO). It is estimated to affect 150 million people worldwide, with a high relevance in resource-poor settings of the African continent. The gold-standard diagnosis is still direct observation of Schistosoma haematobium eggs in urine samples by optical microscopy. Novel diagnostic techniques based on digital image analysis by Artificial Intelligence (AI) tools are a suitable alternative for schistosomiasis diagnosis.MethodologyDigital images of 24 urine sediment samples were acquired in non-endemic settings. S. haematobium eggs were manually labeled in digital images by laboratory professionals and used for training YOLOv5 and YOLOv8 models, which would achieve automatic detection and localization of the eggs. Urine sediment images were also employed to perform binary classification of images to detect erythrocytes/leukocytes with the MobileNetv3Large, EfficientNetv2, and NasNetLarge models. A robotized microscope system was employed to automatically move the slide through the X-Y axis and to auto-focus the sample.ResultsA total number of 1189 labels were annotated in 1017 digital images from urine sediment samples. YOLOv5x training demonstrated a 99.3% precision, 99.4% recall, 99.3% F-score, and 99.4% mAP0.5 for S. haematobium detection. NasNetLarge has an 85.6% accuracy for erythrocyte/leukocyte detection with the test dataset. Convolutional neural network training and comparison demonstrated that YOLOv5x for the detection of eggs and NasNetLarge for the binary image classification to detect erythrocytes/leukocytes were the best options for our digital image database.ConclusionsThe development of low-cost novel diagnostic techniques based on the detection and identification of S. haematobium eggs in urine by AI tools would be a suitable alternative to conventional microscopy in non-endemic settings. This technical proof-of-principle study allows laying the basis for improving the system, and optimizing its implementation in the laboratories.

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