A Few-Shot Learning Approach Assists in the Prognosis Prediction of Magnetic Resonance-Guided Focused Ultrasound for the Local Control of Bone Metastatic Lesions.
Fang-Chi HsuHsin-Lun LeeYin-Ju ChenYao-An ShenYi-Chieh TsaiMeng-Huang WuChia-Chun KuoLong-Sheng LuShauh-Der YehWen-Sheng HuangChia-Ning ShenJeng-Fong ChiouPublished in: Cancers (2022)
Magnetic resonance-guided focused ultrasound surgery (MRgFUS) constitutes a noninvasive treatment strategy to ablate deep-seated bone metastases. However, limited evidence suggests that, although cytokines are influenced by thermal necrosis, there is still no cytokine threshold for clinical responses. A prediction model to approximate the postablation immune status on the basis of circulating cytokine activation is thus needed. IL-6 and IP-10, which are proinflammatory cytokines, decreased significantly during the acute phase. Wound-healing cytokines such as VEGF and PDGF increased after ablation, but the increase was not statistically significant. In this phase, IL-6, IL-13, IP-10, and eotaxin expression levels diminished the ongoing inflammatory progression in the treated sites. These cytokine changes also correlated with the response rate of primary tumor control after acute periods. The few-shot learning algorithm was applied to test the correlation between cytokine levels and local control ( p = 0.036). The best-fitted model included IL-6, IL-13, IP-10, and eotaxin as cytokine parameters from the few-shot selection, and had an accuracy of 85.2%, sensitivity of 88.6%, and AUC of 0.95. The acceptable usage of this model may help predict the acute-phase prognosis of a patient with painful bone metastasis who underwent local MRgFUS. The application of machine learning in bone metastasis is equivalent or better than the current logistic regression.
Keyphrases
- magnetic resonance
- machine learning
- bone mineral density
- small cell lung cancer
- poor prognosis
- wound healing
- deep learning
- squamous cell carcinoma
- bone loss
- case report
- artificial intelligence
- postmenopausal women
- magnetic resonance imaging
- endothelial cells
- bone regeneration
- coronary artery bypass
- body composition
- binding protein
- atrial fibrillation