Deep Learning-Based Blood Abnormalities Detection as a Tool for VEXAS Syndrome Screening

被引:0
|
作者
Braga, Cedric De Almeida [1 ]
Bauvais, Maxence [2 ]
Sujobert, Pierre [3 ]
Heiblig, Mael [4 ]
Jullien, Maxime [5 ]
Le Calvez, Baptiste [5 ]
Richard, Camille [2 ]
Le Roc'h, Valentin [2 ]
Rault, Emmanuelle [6 ]
Herault, Olivier [6 ]
Peterlin, Pierre [7 ]
Garnier, Alice [7 ]
Chevallier, Patrice [5 ,7 ]
Bouzy, Simon [2 ]
Le Bris, Yannick [2 ,3 ]
Neel, Antoine [8 ]
Graveleau, Julie [9 ]
Kosmider, Olivier [10 ]
Paul-Gilloteaux, Perrine [11 ]
Normand, Nicolas [1 ]
Eveillard, Marion [2 ,5 ]
机构
[1] Nantes Univ, Ecole Cent Nantes, Nantes, France
[2] Nantes Univ Hosp, Hematol Biol, Nantes, France
[3] Hop Lyon Sud, Hematol Biol, Hosp Civils Lyon, Pierre Benite, France
[4] Hop Lyon Sud, Hematol Clin, Hosp Civils Lyon, Pierre Benite, France
[5] Nantes Univ, CNRS, INSERM, CRCI2NA,U1307, F-44000 Nantes, France
[6] Tours Univ Hosp, Hematol Biol, Tours, France
[7] Nantes Univ Hosp, Hematol Clin, Nantes, France
[8] Nantes Univ Hosp, Internal Med, Nantes, France
[9] St Nazaire Gen Hosp, St Nazaire, France
[10] Hop Cochin, AP HP, Hematol Biol, Paris, France
[11] Nantes Univ, CHU Nantes, CNRS, Inserm,BioCore, Nantes, France
关键词
artificial intelligence; deep learning; multilabel classification; polymorphonuclears; VEXAS;
D O I
10.1111/ijlh.14368
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Introduction: VEXAS is a syndrome described in 2020, caused by mutations of the UBA1 gene, and displaying a large pleomorphic array of clinical and hematological features. Nevertheless, these criteria lack significance to discriminate VEXAS from other inflammatory conditions at the screening step. This work hence first focused on singling out dysplastic features indicative of the syndrome among peripheral blood (PB) polymorphonuclears (PMN). A deep learning algorithm is then proposed for automatic detection of these features. Methods: A multicentric dataset, comprising 9514 annotated PMN images was gathered, including UBA1 mutated VEXAS (n = 25), UBA1 wildtype myelodysplastic (n = 14), and UBA1 wildtype cytopenic patients (n = 25). Statistical analysis on a subset of patients was performed to screen for significant abnormalities. Detection of these features on PB was then automated with a convolutional neural network (CNN) for multilabel classification. Results: Significant differences were observed in the proportions of PMNs with pseudo-Pelger, nuclear spikes, vacuoles, and hypogranularity between patients with VEXAS and both cytopenic and myelodysplastic controls. Automatic detection of these abnormalities yielded AUCs in the range [0.85-0.97] and a F1-score of 0.70 on the test set. A VEXAS screening score was proposed, leveraging the model outputs and predicting the UBA1 mutational status with 0.82 sensitivity and 0.71 specificity on the test patients. Conclusion: This study suggests that computer-assisted analysis of PB smears, focusing on suspected VEXAS cases, can provide valuable insights for determining which patients should undergo molecular testing. The presented deep learning approach can help hematologists direct their suspicions before initiating further analyses.
引用
收藏
页码:120 / 129
页数:10
相关论文
共 50 条
  • [1] Deep Learning Based Blood Abnormalities Detection As a Tool for Vexas Syndrome Screening
    Braga, Cedric De Almeida
    Bauvais, Maxence
    Sujobert, Pierre
    Heiblig, Mael
    Jullien, Maxime
    Le Calvez, Baptiste
    Richard, Camille
    Le Roch, Valentin
    Rault, Emmanuelle
    Herault, Olivier
    Peterlin, Pierre
    Garnier, Alice
    Chevallier, Patrice
    Bouzy, Simon
    Le Bris, Yannick
    Neel, Antoine
    Graveleau, Julie
    Paul-Gilloteaux, Perrine
    Kosmider, Olivier
    Normand, Nicolas
    Eveillard, Marion
    BLOOD, 2023, 142
  • [2] Deep learning-based hemorrhage detection for diabetic retinopathy screening
    Aziz, Tamoor
    Charoenlarpnopparut, Chalie
    Mahapakulchai, Srijidtra
    SCIENTIFIC REPORTS, 2023, 13 (01):
  • [3] Deep learning-based hemorrhage detection for diabetic retinopathy screening
    Tamoor Aziz
    Chalie Charoenlarpnopparut
    Srijidtra Mahapakulchai
    Scientific Reports, 13 (1)
  • [4] Deep learning-based detection and segmentation of diffusion abnormalities in acute ischemic stroke
    Chin-Fu Liu
    Johnny Hsu
    Xin Xu
    Sandhya Ramachandran
    Victor Wang
    Michael I. Miller
    Argye E. Hillis
    Andreia V. Faria
    Communications Medicine, 1
  • [5] Deep learning-based detection and segmentation of diffusion abnormalities in acute ischemic stroke
    Liu, Chin-Fu
    Hsu, Johnny
    Xu, Xin
    Ramachandran, Sandhya
    Wang, Victor
    Miller, Michael I.
    Hillis, Argye E.
    Faria, Andreia V.
    COMMUNICATIONS MEDICINE, 2021, 1 (01):
  • [6] Deep Learning-Based Electrocardiogram Signal Noise Detection and Screening Model
    Yoon, Dukyong
    Lim, Hong Seok
    Jung, Kyoungwon
    Kim, Tae Young
    Lee, Sukhoon
    HEALTHCARE INFORMATICS RESEARCH, 2019, 25 (03) : 201 - 211
  • [7] Deep learning-based screening tool for rotator cuff tears on shoulder radiography
    Iio, Ryosuke
    Ueda, Daiju
    Matsumoto, Toshimasa
    Manaka, Tomoya
    Nakazawa, Katsumasa
    Ito, Yoichi
    Hirakawa, Yoshihiro
    Yamamoto, Akira
    Shiba, Masatsugu
    Nakamura, Hiroaki
    JOURNAL OF ORTHOPAEDIC SCIENCE, 2024, 29 (03) : 828 - 834
  • [8] Deep Learning-Based Analysis of Face Images as a Screening Tool for Genetic Syndromes
    Geremek, Maciej
    Szklanny, Krzysztof
    SENSORS, 2021, 21 (19)
  • [9] A Deep Learning-Based Customer Forecasting Tool
    Kuo-Yi Lin
    Jeffrey, J. P. Tsai
    2016 IEEE SECOND INTERNATIONAL CONFERENCE ON MULTIMEDIA BIG DATA (BIGMM), 2016, : 198 - 205
  • [10] Deep learning-based fall detection
    Chiang, Jason Wei Hoe
    Zhang, Li
    DEVELOPMENTS OF ARTIFICIAL INTELLIGENCE TECHNOLOGIES IN COMPUTATION AND ROBOTICS, 2020, 12 : 891 - 898