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Automatic Detection of Brain Metastases in T1-Weighted Construct-Enhanced MRI Using Deep Learning Model

Overview
Journal Cancers (Basel)
Publisher MDPI
Specialty Oncology
Date 2023 Sep 28
PMID 37760413
Authors
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Abstract

As a complication of malignant tumors, brain metastasis (BM) seriously threatens patients' survival and quality of life. Accurate detection of BM before determining radiation therapy plans is a paramount task. Due to the small size and heterogeneous number of BMs, their manual diagnosis faces enormous challenges. Thus, MRI-based artificial intelligence-assisted BM diagnosis is significant. Most of the existing deep learning (DL) methods for automatic BM detection try to ensure a good trade-off between precision and recall. However, due to the objective factors of the models, higher recall is often accompanied by higher number of false positive results. In real clinical auxiliary diagnosis, radiation oncologists are required to spend much effort to review these false positive results. In order to reduce false positive results while retaining high accuracy, a modified YOLOv5 algorithm is proposed in this paper. First, in order to focus on the important channels of the feature map, we add a convolutional block attention model to the neck structure. Furthermore, an additional prediction head is introduced for detecting small-size BMs. Finally, to distinguish between cerebral vessels and small-size BMs, a Swin transformer block is embedded into the smallest prediction head. With the introduction of the F2-score index to determine the most appropriate confidence threshold, the proposed method achieves a precision of 0.612 and recall of 0.904. Compared with existing methods, our proposed method shows superior performance with fewer false positive results. It is anticipated that the proposed method could reduce the workload of radiation oncologists in real clinical auxiliary diagnosis.

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References
1.
Ren S, He K, Girshick R, Sun J . Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks. IEEE Trans Pattern Anal Mach Intell. 2016; 39(6):1137-1149. DOI: 10.1109/TPAMI.2016.2577031. View

2.
Singh Achrol A, Rennert R, Anders C, Soffietti R, Ahluwalia M, Nayak L . Brain metastases. Nat Rev Dis Primers. 2019; 5(1):5. DOI: 10.1038/s41572-018-0055-y. View

3.
Suh J, Kotecha R, Chao S, Ahluwalia M, Sahgal A, Chang E . Current approaches to the management of brain metastases. Nat Rev Clin Oncol. 2020; 17(5):279-299. DOI: 10.1038/s41571-019-0320-3. View

4.
Zhou Z, Sanders J, Johnson J, Gule-Monroe M, Chen M, Briere T . Computer-aided Detection of Brain Metastases in T1-weighted MRI for Stereotactic Radiosurgery Using Deep Learning Single-Shot Detectors. Radiology. 2020; 295(2):407-415. PMC: 8287889. DOI: 10.1148/radiol.2020191479. View

5.
Takao H, Amemiya S, Kato S, Yamashita H, Sakamoto N, Abe O . Deep-learning 2.5-dimensional single-shot detector improves the performance of automated detection of brain metastases on contrast-enhanced CT. Neuroradiology. 2022; 64(8):1511-1518. DOI: 10.1007/s00234-022-02902-3. View