Department of Physical Chemistry, Faculty of Science and Technology, University of the Basque Country (UPV/EHU), Leioa, Spain.
Department of Pathology, Cruces University Hospital, Barakaldo, Spain.
Int J Cancer. 2024 Feb 15;154(4):712-722. doi: 10.1002/ijc.34800. Epub 2023 Nov 20.
Probably, the most important factor for the survival of a melanoma patient is early detection and precise diagnosis. Although in most cases these tasks are readily carried out by pathologists and dermatologists, there are still difficult cases in which no consensus among experts is achieved. To deal with such cases, new methodologies are required. Following this motivation, we explore here the use of lipid imaging mass spectrometry as a complementary tool for the aid in the diagnosis. Thus, 53 samples (15 nevus, 24 primary melanomas, and 14 metastasis) were explored with the aid of a mass spectrometer, using negative polarity. The rich lipid fingerprint obtained from the samples allowed us to set up an artificial intelligence-based classification model that achieved 100% of specificity and precision both in training and validation data sets. A deeper analysis of the image data shows that the technique reports important information on the tumor microenvironment that may give invaluable insights in the prognosis of the lesion, with the correct interpretation.
也许,黑色素瘤患者生存的最重要因素是早期发现和精确诊断。尽管在大多数情况下,这些任务都由病理学家和皮肤科医生轻松完成,但仍有一些疑难病例,专家之间无法达成共识。为了处理这些病例,需要新的方法。基于这一动机,我们在这里探讨了使用脂质成像质谱作为辅助诊断的工具。因此,我们使用负极性,用质谱仪研究了 53 个样本(15 个痣、24 个原发性黑素瘤和 14 个转移瘤)。从这些样本中获得的丰富脂质指纹图谱使我们能够建立一个基于人工智能的分类模型,在训练和验证数据集上都达到了 100%的特异性和精度。对图像数据的深入分析表明,该技术报告了有关肿瘤微环境的重要信息,这些信息可能为病变的预后提供宝贵的见解,前提是正确解读。