Detection of circulating plasma cells in peripheral blood using deep learning‐based morphological analysis

Author:

Chen Pu1,Zhang Lan1,Cao Xinyi2,Jin Xinyi2ORCID,Chen Nan1,Zhang Li1,Zhu Jianfeng1,Pan Baishen134,Wang Beili134,Guo Wei1345ORCID

Affiliation:

1. Department of Laboratory Medicine Zhongshan Hospital Fudan University Shanghai China

2. Department of Medical Development Hangzhou Zhiwei Information and Technology Co. Ltd. Hangzhou China

3. Department of Laboratory Medicine Xiamen Branch Zhongshan Hospital Fudan University Xiamen China

4. Department of Laboratory Medicine Wusong Branch Zhongshan Hospital Fudan University Shanghai China

5. Department of Laboratory Medicine Shanghai Geriatric Medical Center Zhongshan Hospital Fudan University Shanghai China

Abstract

AbstractBackgroundThe presence of circulating plasma cells (CPCs) is an important laboratory indicator for the diagnosis, staging, risk stratification, and progression monitoring of multiple myeloma (MM). Early detection of CPCs in the peripheral blood (PB) followed by timely interventions can significantly improve MM prognosis and delay its progression. Although the conventional cell morphology examination remains the predominant method for CPC detection because of accessibility, its sensitivity and reproducibility are limited by technician expertise and cell quantity constraints. This study aims to develop an artificial intelligence (AI)–based automated system for a more sensitive and efficient CPC morphology detection.MethodsA total of 137 bone marrow smears and 72 PB smears from patients with at Zhongshan Hospital, Fudan University, were retrospectively reviewed. Using an AI‐powered digital pathology platform, Morphogo, 305,019 cell images were collected for training. Morphogo’s efficacy in CPC detection was evaluated with additional 184 PB smears (94 from patients with MM and 90 from those with other hematological malignancies) and compared with manual microscopy.ResultsMorphogo achieved 99.64% accuracy, 89.03% sensitivity, and 99.68% specificity in classifying CPCs. At a 0.60 threshold, Morphogo achieved a sensitivity of 96.15%, which was approximately twice that of manual microscopy, with a specificity of 78.03%. Patients with CPCs detected by AI scanning had a significantly shorter median progression‐free survival compared with those without CPC detection (18 months vs. 34 months, p< .01).ConclusionsMorphogo is a highly sensitive system for the automated detection of CPCs, with potential applications in initial screening, prognosis prediction, and posttreatment monitoring for MM patients.Plain Language SummaryDiagnosing and monitoring multiple myeloma (MM), a type of blood cancer, requires identifying and quantifying specific cells called circulating plasma cells (CPCs) in the blood. The conventional method for detecting CPCs is manual microscopic examination, which is time‐consuming and lacks sensitivity. This study introduces a highly sensitive CPC detection method using an artificial intelligence–based system, Morphogo. It demonstrated remarkable sensitivity and accuracy, surpassing conventional microscopy. This advanced approach suggests that early and accurate CPC detection is achievable by morphology examination, making efficient CPC screening more accessible for patients with MM. This innovative system has the potential to be used in the diagnosis and risk assessment of MM.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Cancer Research,Oncology

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