Departamento de Física, Instituto de Ciências Exatas, Universidade Federal de Minas Gerais, Belo Horizonte, MG, Brazil.
Departamento de Anatomia Patológica e Medicina Legal, Faculdade de Medicina, Universidade Federal de Minas Gerais, Belo Horizonte, MG, Brazil.
J Biophotonics. 2023 Jun;16(6):e202200382. doi: 10.1002/jbio.202200382. Epub 2023 Mar 15.
Prostate carcinoma, a slow-growing and often indolent tumour, is the second most commonly diagnosed cancer among men worldwide. The prognosis is mainly based on the Gleason system through prostate biopsy analysis. However, new treatment and monitoring strategies depend on a more precise diagnosis. Here, we present results by multiphoton imaging for prostate tumour samples from 120 patients that allow to obtain quantitative parameters leading to specific tumour aggressiveness signatures. An automated image analysis was developed to recognise and quantify stromal fibre and neoplastic cell regions in each image. The set of metrics was able to distinguish between non-neoplastic tissue and carcinoma areas by linear discriminant analysis and random forest with accuracy of 89% ± 3%, but between Gleason groups of only 46% ± 6%. The reactive stroma analysis improved the accuracy to 65% ± 5%, clearly demonstrating that stromal parameters should be considered as additional criteria for a more accurate diagnosis.
前列腺癌是一种生长缓慢且通常惰性的肿瘤,是全球男性中第二大常见的癌症。预后主要基于前列腺活检分析的 Gleason 系统。然而,新的治疗和监测策略取决于更精确的诊断。在这里,我们通过多光子成像展示了 120 名患者的前列腺肿瘤样本的结果,这些结果可获得定量参数,从而得出特定的肿瘤侵袭性特征。开发了一种自动图像分析方法来识别和量化每个图像中的基质纤维和肿瘤细胞区域。通过线性判别分析和随机森林,该指标集能够以 89%±3%的准确率区分非肿瘤组织和癌组织区域,但对于 Gleason 组的准确率仅为 46%±6%。反应性基质分析将准确率提高到了 65%±5%,这清楚地表明基质参数应被视为更准确诊断的附加标准。