Artificial intelligence-based morphologic classification and molecular characterization of neuroblastic tumors from digital histopathology.
Mark ApplebaumSiddhi RameshEmma DyerMonica PomavilleKristina DoytchevaJames DolezalSara KochannyRachel TerhaarCasey MehrhoffKritika PatelJacob BrewerBenjamin KusswurmArlene NaranjoHiroyuki ShimadaElizabeth A SokolSusan L CohnRani GeorgeAlexander T PearsonPublished in: Research square (2024)
A deep learning model using attention-based multiple instance learning (aMIL) and self-supervised learning (SSL) was developed to perform pathologic classification of neuroblastic tumors and assess MYCN -amplification status using H&E-stained whole slide digital images. The model demonstrated strong performance in identifying diagnostic category, grade, mitosis-karyorrhexis index (MKI), and MYCN -amplification on an external test dataset. This AI-based approach establishes a valuable tool for automating diagnosis and precise classification of neuroblastoma tumors.