A systematic review of deep learning-based spinal bone lesion detection in medical images

Author:

Teodorescu Bianca12ORCID,Gilberg Leonard13ORCID,Melton Philip William14,Hehr Rudolph Matthias1,Guzel Hamza Eren15,Koc Ali Murat16,Baumgart Andre7,Maerkisch Leander1,Ataide Elmer Jeto Gomes1

Affiliation:

1. Floy GmbH, Munich, Germany

2. Department of Medicine II, University Hospital, LMU Munich, Munich, Germany

3. Department of Medicine IV, University Hospital, LMU Munich, Munich, Germany

4. Institute for Stroke and Dementia Research, Klinikum der Universität München, Munich, Germany

5. University of Health Sciences İzmir Bozyaka Research and Training Hospital, Izmir, Turkey

6. Ataturk Education and Research Hospital, Department of Radiology, Izmir Katip Celebi University, Izmir, Turkey

7. Mannheim Institute of Public Health, Universität Medizin Mannheim, Mannheim, Germany

Abstract

Spinal bone lesions encompass a wide array of pathologies, spanning from benign abnormalities to aggressive malignancies, such as diffusely localized metastases. Early detection and accurate differentiation of the underlying diseases is crucial for every patient's clinical treatment and outcome, with radiological imaging being a core element in the diagnostic pathway. Across numerous pathologies and imaging techniques, deep learning (DL) models are progressively considered a valuable resource in the clinical setting. This review describes not only the diagnostic performance of these models and the differing approaches in the field of spinal bone malignancy recognition, but also the lack of standardized methodology and reporting that we believe is currently hampering this newly founded area of research. In line with their established and reliable role in lesion detection, this publication focuses on both computed tomography and magnetic resonance imaging, as well as various derivative modalities (i.e. SPECT). After conducting a systematic literature search and subsequent analysis for applicability and quality using a modified QUADAS-2 scoring system, we confirmed that most of the 14 identified studies were plagued by major limitations, such as insufficient reporting of model statistics and data acquisition, a lacking external validation dataset, and potentially biased annotation. Although we experienced these limitations, we nonetheless conclude that the potential of these methods shines through in the presented results. These findings underline the need for more stringent quality controls in DL studies, as well as model development to afford increased insight and progress in this promising novel field.

Publisher

SAGE Publications

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