Demystifying neuroblastoma malignancy through fractal dimension, entropy, and lacunarity.

IF 2 4区 医学 Q3 ONCOLOGY
Tumori Pub Date : 2023-08-01 DOI:10.1177/03008916221146208
Irene Donato, Kiran K Velpula, Andrew J Tsung, Jack A Tuszynski, Consolato M Sergi
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引用次数: 2

Abstract

Purpose: Neuroblastoma is a pediatric solid tumor with a prognosis associated with histology and age of the patient, which are the parameters of the well-established current classification (Shimada classification). Despite the development of new treatment options, the prognosis of high-risk neuroblastoma patients is still poor. Therefore, there is a continuous need to stratify the children suffering from this tumor. A mathematical and computational approach is proposed to enable automatic and precise cancer diagnosis on the histological slide.

Methods: We targeted the complexity of neuroblastoma by calculating its image entropy (S), fractal dimension (FD), and lacunarity (λ) in a combined mathematical code. First, we tested the proposed method for patient-derived glioma images. It allowed distinguishing between normal brain tissue, grade II, and grade III glioma, which harbor different outcomes.

Results: In neuroblastoma, our analysis of image's FD, S, and λ combined with a machine learning algorithm automatically predicted tumor malignancy with a receiver operating characteristic curve of 0.82. FD, S, and λ distinguish between neuroblastoma and ganglioneuroma, but they only partially differentiate between the normal samples and the other classes. Ganglioneuroma, the most differentiated form, and poorly-differentiated neuroblastoma display different values of FD, S, and λ.

Conclusions: FD, S, and λ of imaging recognize groups in neuroblastic tumors. We suggest that future studies including these features may challenge the current Shimada classification of neuroblastoma with categories of favorable and unfavorable histology. It is expected that this methodology could trigger multicenter studies and potentially find practical use in the clinical setting of children's hospitals worldwide.

通过分形维数、熵和腔隙来揭示神经母细胞瘤的恶性。
目的:神经母细胞瘤是一种儿童实体肿瘤,其预后与患者的组织学和年龄有关,这是目前公认的分类(Shimada分类)的参数。尽管有了新的治疗方案,但高危神经母细胞瘤患者的预后仍然很差。因此,有一个持续的需要分层的儿童患有这种肿瘤。提出了一种数学和计算方法,以实现对组织学切片的自动和精确的癌症诊断。方法:我们通过计算神经母细胞瘤的图像熵(S)、分形维数(FD)和空隙度(λ)来确定神经母细胞瘤的复杂性。首先,我们测试了提出的方法,用于患者来源的胶质瘤图像。它可以区分正常脑组织,II级和III级胶质瘤,它们具有不同的结果。结果:在神经母细胞瘤中,我们对图像FD、S和λ的分析结合机器学习算法自动预测肿瘤的恶性程度,接受者工作特征曲线为0.82。FD, S和λ区分神经母细胞瘤和神经节神经瘤,但它们只能部分区分正常样本和其他类别。分化程度最高的神经节神经瘤和分化程度较低的神经母细胞瘤的FD、S和λ值不同。结论:FD、S、λ在神经母细胞肿瘤中的影像学识别组。我们认为,包括这些特征的未来研究可能会挑战目前的岛田神经母细胞瘤的有利和不利组织学分类。预计这种方法可以引发多中心研究,并有可能在全球儿童医院的临床环境中找到实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Tumori
Tumori 医学-肿瘤学
CiteScore
3.50
自引率
0.00%
发文量
58
审稿时长
6 months
期刊介绍: Tumori Journal covers all aspects of cancer science and clinical practice with a strong focus on prevention, translational medicine and clinically relevant reports. We invite the publication of randomized trials and reports on large, consecutive patient series that investigate the real impact of new techniques, drugs and devices inday-to-day clinical practice.
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