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Differentiation Between Cerebral Alveolar Echinococcosis and Brain Metastases with Radiomics Combined Machine Learning Approach

Overview
Journal Eur J Med Res
Publisher Biomed Central
Specialty General Medicine
Date 2023 Dec 9
PMID 38071384
Authors
Affiliations
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Abstract

Background: Cerebral alveolar echinococcosis (CAE) and brain metastases (BM) share similar in locations and imaging appearance. However, they require distinct treatment approaches, with CAE typically treated with chemotherapy and surgery, while BM is managed with radiotherapy and targeted therapy for the primary malignancy. Accurate diagnosis is crucial due to the divergent treatment strategies.

Purpose: This study aims to evaluate the effectiveness of radiomics and machine learning techniques based on magnetic resonance imaging (MRI) to differentiate between CAE and BM.

Methods: We retrospectively analyzed MRI images of 130 patients (30 CAE and 100 BM) from Xinjiang Medical University First Affiliated Hospital and The First People's Hospital of Kashi Prefecture, between January 2014 and December 2022. The dataset was divided into training (91 cases) and testing (39 cases) sets. Three dimensional tumors were segmented by radiologists from contrast-enhanced T1WI images on open resources software 3D Slicer. Features were extracted on Pyradiomics, further feature reduction was carried out using univariate analysis, correlation analysis, and least absolute shrinkage and selection operator (LASSO). Finally, we built five machine learning models, support vector machine, logistic regression, linear discrimination analysis, k-nearest neighbors classifier, and Gaussian naïve bias and evaluated their performance via several metrics including sensitivity (recall), specificity, positive predictive value (precision), negative predictive value, accuracy and the area under the curve (AUC).

Results: The area under curve (AUC) of support vector classifier (SVC), linear discrimination analysis (LDA), k-nearest neighbors (KNN), and gaussian naïve bias (NB) algorithms in training (testing) sets are 0.99 (0.94), 1.00 (0.87), 0.98 (0.92), 0.97 (0.97), and 0.98 (0.93), respectively. Nested cross-validation demonstrated the robustness and generalizability of the models. Additionally, the calibration plot and decision curve analysis demonstrated the practical usefulness of these models in clinical practice, with lower bias toward different subgroups during decision-making.

Conclusion: The combination of radiomics and machine learning approach based on contrast enhanced T1WI images could well distinguish CAE and BM. This approach holds promise in assisting doctors with accurate diagnosis and clinical decision-making.

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References
1.
Boire A, Brastianos P, Garzia L, Valiente M . Brain metastasis. Nat Rev Cancer. 2019; 20(1):4-11. DOI: 10.1038/s41568-019-0220-y. View

2.
Deplazes P, Rinaldi L, Alvarez Rojas C, Torgerson P, Harandi M, Romig T . Global Distribution of Alveolar and Cystic Echinococcosis. Adv Parasitol. 2017; 95:315-493. DOI: 10.1016/bs.apar.2016.11.001. View

3.
Peng S, Chen L, Tao J, Liu J, Zhu W, Liu H . Radiomics Analysis of Multi-Phase DCE-MRI in Predicting Tumor Response to Neoadjuvant Therapy in Breast Cancer. Diagnostics (Basel). 2021; 11(11). PMC: 8625316. DOI: 10.3390/diagnostics11112086. View

4.
Han H, Jiang X . Overcome support vector machine diagnosis overfitting. Cancer Inform. 2015; 13(Suppl 1):145-58. PMC: 4264614. DOI: 10.4137/CIN.S13875. View

5.
Zhao M, Wen F, Shi J, Song J, Zhao J, Song Q . MRI-based radiomics nomogram for the preoperative prediction of deep myometrial invasion of FIGO stage I endometrial carcinoma. Med Phys. 2022; 49(10):6505-6516. DOI: 10.1002/mp.15835. View