Imaging Flow Cytometry and Convolutional Neural Network-Based Classification Enable Discrimination of Hematopoietic and Leukemic Stem Cells in Acute Myeloid Leukemia

Author:

Hybel Trine Engelbrecht12ORCID,Jensen Sofie Hesselberg12,Rodrigues Matthew A.3,Hybel Thomas Engelbrecht1,Pedersen Maya Nautrup12,Qvick Signe Håkansson1,Enemark Marie Hairing12,Bill Marie12,Rosenberg Carina Agerbo1ORCID,Ludvigsen Maja12ORCID

Affiliation:

1. Department of Hematology, Aarhus University Hospital, 8200 Aarhus N, Denmark

2. Department of Clinical Medicine, Aarhus University, 8200 Aarhus N, Denmark

3. Amnis Flow Cytometry, Cytek Biosciences, Seattle, WA 98119, USA

Abstract

Acute myeloid leukemia (AML) is a heterogenous blood cancer with a dismal prognosis. It emanates from leukemic stem cells (LSCs) arising from the genetic transformation of hematopoietic stem cells (HSCs). LSCs hold prognostic value, but their molecular and immunophenotypic heterogeneity poses challenges: there is no single marker for identifying all LSCs across AML samples. We hypothesized that imaging flow cytometry (IFC) paired with artificial intelligence-driven image analysis could visually distinguish LSCs from HSCs based solely on morphology. Initially, a seven-color IFC panel was employed to immunophenotypically identify LSCs and HSCs in bone marrow samples from five AML patients and ten healthy donors, respectively. Next, we developed convolutional neural network (CNN) models for HSC-LSC discrimination using brightfield (BF), side scatter (SSC), and DNA images. Classification using only BF images achieved 86.96% accuracy, indicating significant morphological differences. Accuracy increased to 93.42% when combining BF with DNA images, highlighting differences in nuclear morphology, although DNA images alone were inadequate for accurate HSC-LSC discrimination. Model development using SSC images revealed minor granularity differences. Performance metrics varied substantially between AML patients, indicating considerable morphologic variations among LSCs. Overall, we demonstrate proof-of-concept results for accurate CNN-based HSC-LSC differentiation, instigating the development of a novel technique within AML monitoring.

Funder

Danish Cancer Society

Max Wørzner and wife Inger Wørzner’s Foundation

Department of Clinical Medicine, AU

Toyota Foundation, Dagmar Marshall’s Foundation

Eva and Henry Frænkel’s Memorial Foundation

Poul and Ellen Hertz’s Foundation

Aase and Ejnar Danielsen’s Foundation

Family Hede Nielsen Foundation

Publisher

MDPI AG

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