| Literature DB >> 35053608 |
Fang-Chi Hsu1,2, Hsin-Lun Lee2,3,4, Yin-Ju Chen5,6,7,8, Yao-An Shen9,10,11, Yi-Chieh Tsai12, Meng-Huang Wu13,14, Chia-Chun Kuo3,15,16,17, Long-Sheng Lu3,5,6,7,18, Shauh-Der Yeh19,20,21, Wen-Sheng Huang22, Chia-Ning Shen1,4,10, Jeng-Fong Chiou1,2,3,7.
Abstract
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.Entities:
Keywords: HIFU; bone metastasis; machine learning; magnetic resonance-guided focused ultrasound surgery; prognosis prediction
Year: 2022 PMID: 35053608 PMCID: PMC8773927 DOI: 10.3390/cancers14020445
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Figure 1(A) Work flow of cytokine parameter collection; (B) schematic of few-shot learning approach for parameter classification.
Patient status and demographics of overall dataset.
| Patient Characteristics |
|
|---|---|
|
| 20 |
|
| 63.95 |
|
| |
| Male | 8 (40%) |
| Female | 12 (60%) |
|
| 83 |
| Primary Tumor | |
| Breast cancer | 6 (30%) |
| Lung cancer | 8 (40%) |
| Prostate cancer | 1 (5%) |
| Colon cancer | 3 (15%) |
| Renal cell carcinoma | 2 (10%) |
|
| |
| Rib | 1 (5%) |
| Sternum | 1 (5%) |
| Acetabulum | 1 (5%) |
| Ilium | 3 (15%) |
| Ischium | 1 (5%) |
| Sacroiliac joint | 6 (30%) |
| Sacrum | 5 (25%) |
| Scapula | 2 (10%) |
|
| |
| Mean ± std (range) | 6.65 ± 1.72 (4–9) |
| 4–6 | 9 (45%) |
| 7–10 | 11 (55%) |
Baseline cytokine and post-treatment cytokine status of MRgFUS thermal ablation for bone metastasis.
| Cytokine | Pretreatment | Post-Treatment | |
|---|---|---|---|
| IL-6 | 5.54 | 3.62 | 0.049 * |
| Exotaxin | 27.37 | 20.76 | 0.067 |
| IL-13 | 3.50 | 2.371 | 0.075 |
| IP-10 | 442.21 | 316.28 | 0.004 * |
| IL-1b | 1.64 | 1.85 | 0.514 |
| IL-1ra | 86.11 | 137.23 | 0.313 |
| IL-2 | 7.31 | 17.73 | 0.217 |
| IL-4 | 0.72 | 0.72 | 0.920 |
| IL-5 | 6.35 | 5.93 | 0.200 |
| IL-7 | 4.41 | 4.03 | 0.182 |
| IL-8 | 15.52 | 8.21 | 0.472 |
| IL-9 | 10.39 | 9.29 | 0.188 |
| IL-10 | 13.96 | 32.69 | 0.335 |
| IL-12 | 14.68 | 25.56 | 0.366 |
| IL-17 | 12.18 | 15.53 | 0.468 |
| FGF | 17.51 | 19.84 | 0.506 |
| G-CSF | 32.99 | 55.98 | 0.327 |
| INF-gamma | 48.21 | 48.94 | 0.889 |
| MCP-1 | 7.01 | 7.27 | 0.870 |
| MIP-1a | 2.223 | 2.362 | 0.759 |
| MIP-1b | 15.13 | 13.30 | 0.192 |
| PDGF | 129.72 | 203.48 | 0.296 |
| RANTES | 1388.5 | 1492.9 | 0.425 |
| TNF-α | 26.96 | 27.80 | 0.733 |
| VEGF | 10.06 | 15.26 | 0.394 |
* Paired Mann–Whitney U test significance: p value < 0.05; IL, interleukin; FGF, fibroblast growth factor; G-CSF, granulocyte colony-stimulating factor; GM-CSF, granulocyte macrophage colony-stimulating factor; IFN, interferon; IP-10, interferon gamma-induced protein 10; MCP-1, monocyte chemoattractant protein 1; MIP, macrophage inflammatory protein; PDGF, platelet-derived growth factor; RANTES, regulated upon Activation, Normal T cell Expressed, and Secreted; TNF, tumor necrosis factor; VEGF, vascular endothelial growth factor.
Summary of treatment parameters for MRgFUS.
| Treatment Parameters | Mean |
|---|---|
| Number of Sonication | 21.42 |
| Duration of treatment (min) | 74.38 |
| Average acoustic power (W) | 51.08 |
| Average energy applied (J) | 1029.93 |
| Temperature (°C) | 67.71 |
Univariate and multivariate analyses of parameters for prediction of clinical responses to MRgFUS.
| Parameter | Univariate Analysis: | Multivariable Analyses: | ||||
|---|---|---|---|---|---|---|
| OR | 95% CI | OR | 95% CI | |||
| Age, median (range), years | 0.96 | 0.83–1.07 | 0.51 | 1.02 | 0.83–1.24 | 0.81 |
| Gender (male vs. female) | 0.15 | 0.01–1.52 | 0.13 | |||
| Pretreatment pain score (NRS) | 0.85 | 0.41–1.66 | 0.64 | |||
| Pretreatment KPS | 1.27 | 1.05–1.74 | 0.04 * | 1.23 | 1.00–1.74 | 0.04 * |
| IL-1b | 1.46 | 0.61–10.39 | 0.53 | |||
| IL-6 | 0.72 | 0.48–0.96 | 0.04 * | 0.77 | 0.48–1.08 | 0.16 |
| Exotaxin | 0.94 | 0.83–1.03 | 0.19 | |||
| IL-10 | 1.08 | 0.98–1.87 | 0.68 | |||
| IL-13 | 1.13 | 0.75–2.23 | 0.62 | |||
| IP-10 | 0.99 | 0.98–0.99 | 0.07 | |||
| IL-17a | 1.06 | 0.95–1.36 | 0.43 | |||
* p value < 0.05.
Suggested regression models for analysis of the relationship between clinical characteristics and local control response.
| Relationship Formalization | Accuracy | AUC | AIC |
|---|---|---|---|
| Logistic regression: | 0.88 | 0.88 | 19.35 |
| Few-shot learning model: | 0.95 | 0.95 | 17.14 |
Figure 2ROC curves of each prediction model. (A) Multivariable logistic regression model with stepwise parameter selection (AUC: 0.88); (B) few-shot learning classification (AUC: 0.95); (C) merged ROC curve.