College of Mechanical Engineering and Automation, Fuzhou University, Fuzhou 350108, China.
Key Laboratory of OptoElectronic Science and Technology for Medicine of Ministry of Education, Fujian Provincial Key Laboratory of Photonics Technology, Fujian Normal University, Fuzhou 350007, China.
Theranostics. 2022 Sep 11;12(15):6595-6610. doi: 10.7150/thno.77532. eCollection 2022.
Cerebral cavernous malformation (CCM) is prone to recurring microhemorrhage, which can lead to drug-resistant epilepsy. Surgical resection is the first choice to control seizures for CCM-associated epilepsy. At present, removal of resection-related tissue only depends on cautious visual identification of CCM lesions and perilesional yellowish hemosiderin rim by the neurosurgeon. Inspired by the resection requirements, we proposed quantitative multiphoton microscopy (qMPM) for a histopathology-level diagnostic paradigm to assist clinicians in precisely complete resection. A total of 35 sections specimens collected from 12 patients with the CCM-related epilepsy were included in this study. First, qMPM utilized a label-free multi-channel selective detection to image the histopathological features based on the spectral characteristics of CCM tissues. Then, qMPM developed three customized algorithms to provide quantitative information, a vascular patterns classifier based on linear support vector machine, visualization of microhemorrhage regions based on hemosiderin-related parameters, and the CCM-oriented virtual staining generative adversarial network (CCM-stainGAN) was constructed to generate two types of virtual staining. Focused on CCM lesion and perilesional regions, qMPM imaged malformed vascular patterns and micron-scale hemosiderin-related products. Four vascular patterns were automatically identified by the classifier with an area under the receiver operating characteristic curve of 0.97. Moreover, qMPM mapped different degrees of hemorrhage regions onto fresh tissue while providing three quantitative hemosiderin-related indicators. Besides, qMPM realized virtual staining by the CCM-stainGAN with 98.8% diagnostic accuracy of CCM histopathological features in blind analysis. Finally, we provided pathologists and surgeons with the qMPM-based CCM histopathological diagnostic guidelines for a more definitive intraoperative or postoperative diagnosis. qMPM can provide decision-making supports for histopathological diagnosis, and resection guidance of CCM from the perspectives of high-resolution precision detection and automated quantitative assessment. Our work will promote the development of MPM diagnostic instruments and enable more optical diagnostic applications for epilepsy.
脑内海绵状血管畸形(CCM)易发生反复微出血,导致耐药性癫痫。手术切除是 CCM 相关癫痫控制发作的首选方法。目前,切除相关组织仅依赖于神经外科医生对 CCM 病变和病变周围黄染含铁血黄素环的谨慎视觉识别。受切除要求的启发,我们提出了定量多光子显微镜(qMPM),用于建立一种组织病理学水平的诊断范式,以协助临床医生精确地完成完全切除。本研究共纳入 12 例 CCM 相关癫痫患者的 35 个切片标本。首先,qMPM 利用无标记多通道选择性检测,根据 CCM 组织的光谱特征对组织病理学特征进行成像。然后,qMPM 开发了三种定制算法来提供定量信息,一种基于线性支持向量机的血管模式分类器,基于铁相关参数的微出血区域可视化,以及面向 CCM 的虚拟染色生成对抗网络(CCM-stainGAN),用于生成两种类型的虚拟染色。qMPM 聚焦于 CCM 病变和病变周围区域,对畸形血管模式和微米级铁相关产物进行成像。分类器自动识别了四种血管模式,其受试者工作特征曲线下面积为 0.97。此外,qMPM 将不同程度的出血区域映射到新鲜组织上,同时提供了三个铁相关的定量指标。此外,qMPM 通过 CCM-stainGAN 实现了虚拟染色,在盲法分析中对 CCM 组织病理学特征的诊断准确率为 98.8%。最后,我们为病理学家和外科医生提供了基于 qMPM 的 CCM 组织病理学诊断指南,以实现更明确的术中或术后诊断。qMPM 可以从高分辨率精确检测和自动定量评估的角度为 CCM 的组织病理学诊断和切除提供决策支持。我们的工作将促进 MPM 诊断仪器的发展,并为癫痫的更多光学诊断应用提供可能。