<p>Fabry disease (FD) is a rare lysosomal storage disorder caused by mutations in the GLA gene, resulting in globotriaosylceramide accumulation. Kidney involvement (Fabry nephropathy) significantly contributes to morbidity and mortality. Diagnosis can be difficult, especially in females or late-onset variants. Renal biopsy remains essential, but interpretation requires expert pathologists. Digital pathology and artificial intelligence (AI) offer promising solutions to support diagnosis. The study analyzed Whole-slide images from renal biopsies of Fabry nephropathy patients to develop and validate a “foamy podocytes” screening AI tool. Two computational tasks were performed: glomerular-level classification, and podocyte-level segmentation. Performance was evaluated using standard metrics. A novel ZEBRA score (fpA/tgA%) was developed to quantify disease burden, and correlations with histological scores and clinical parameters were assessed. EfficientNetB2 achieved the highest classification accuracy (79%) in identifying foamy podocytes. SegFormerB4 had the best segmentation performance (Dice = 0.46, IoU = 0.37). The ZEBRA score effectively distinguished Fabry nephropathy from controls (<i>p</i> &lt; 0.001) and showed good correlation with manual scoring (rs = 0.66–0.71). The AI-assisted ZEBRA pipeline highlights high-risk Fabry nephropathy features to support nephropathologists as a screening tool.</p>

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Zebra bodies recognition by artificial intelligence (ZEBRA): a computational tool for Fabry nephropathy

  • Giorgio Cazzaniga,
  • Maurizio Carbone,
  • Raffaella Barretta,
  • Gabriele Casati,
  • Simona Vatrano,
  • Giovanni Gambaro,
  • Gisella Vischini,
  • Irene Capelli,
  • Renzo Mignani,
  • Gianandrea Pasquinelli,
  • Federico Pieruzzi,
  • Leonardo Caroti,
  • Egrina Dervishi,
  • Marco Allinovi,
  • Luca Novelli,
  • Antonio Pisani,
  • Albino Eccher,
  • Fabio Pagni,
  • Vincenzo L’Imperio

摘要

Fabry disease (FD) is a rare lysosomal storage disorder caused by mutations in the GLA gene, resulting in globotriaosylceramide accumulation. Kidney involvement (Fabry nephropathy) significantly contributes to morbidity and mortality. Diagnosis can be difficult, especially in females or late-onset variants. Renal biopsy remains essential, but interpretation requires expert pathologists. Digital pathology and artificial intelligence (AI) offer promising solutions to support diagnosis. The study analyzed Whole-slide images from renal biopsies of Fabry nephropathy patients to develop and validate a “foamy podocytes” screening AI tool. Two computational tasks were performed: glomerular-level classification, and podocyte-level segmentation. Performance was evaluated using standard metrics. A novel ZEBRA score (fpA/tgA%) was developed to quantify disease burden, and correlations with histological scores and clinical parameters were assessed. EfficientNetB2 achieved the highest classification accuracy (79%) in identifying foamy podocytes. SegFormerB4 had the best segmentation performance (Dice = 0.46, IoU = 0.37). The ZEBRA score effectively distinguished Fabry nephropathy from controls (p < 0.001) and showed good correlation with manual scoring (rs = 0.66–0.71). The AI-assisted ZEBRA pipeline highlights high-risk Fabry nephropathy features to support nephropathologists as a screening tool.