Doctoral Program, Biology Science, Faculty of Medicine, Universitas Sriwijaya, Palembang 30139, Indonesia.
Division of Oncology-Gynecology, Department of Obstetrics and Gynecology, Mohammad Hoesin General Hospital, Palembang 30126, Indonesia.
Sensors (Basel). 2022 Jul 22;22(15):5489. doi: 10.3390/s22155489.
Precancerous screening using visual inspection with acetic acid (VIA) is suggested by the World Health Organization (WHO) for low-middle-income countries (LMICs). However, because of the limited number of gynecological oncologist clinicians in LMICs, VIA screening is primarily performed by general clinicians, nurses, or midwives (called medical workers). However, not being able to recognize the significant pathophysiology of human papilloma virus (HPV) infection in terms of the columnar epithelial-cell, squamous epithelial-cell, and white-spot regions with abnormal blood vessels may be further aggravated by VIA screening, which achieves a wide range of sensitivity (49-98%) and specificity (75-91%); this might lead to a false result and high interobserver variances. Hence, the automated detection of the columnar area (CA), subepithelial region of the squamocolumnar junction (SCJ), and acetowhite (AW) lesions is needed to support an accurate diagnosis. This study proposes a mask-RCNN architecture to simultaneously segment, classify, and detect CA and AW lesions. We conducted several experiments using 262 images of VIA+ cervicograms, and 222 images of VIA-cervicograms. The proposed model provided a satisfactory intersection over union performance for the CA of about 63.60%, and AW lesions of about 73.98%. The dice similarity coefficient performance was about 75.67% for the CA and about 80.49% for the AW lesion. It also performed well in cervical-cancer precursor-lesion detection, with a mean average precision of about 86.90% for the CA and of about 100% for the AW lesion, while also achieving 100% sensitivity and 92% specificity. Our proposed model with the instance segmentation approach can segment, detect, and classify cervical-cancer precursor lesions with satisfying performance only from a VIA cervicogram.
世界卫生组织(WHO)建议中低收入国家(LMICs)使用醋酸视觉检查(VIA)进行癌前筛查。然而,由于 LMICs 中妇科肿瘤学家临床医生的数量有限,VIA 筛查主要由普通临床医生、护士或助产士(称为医务人员)进行。然而,由于 VIA 筛查可能会进一步加剧无法识别柱状上皮细胞、鳞状上皮细胞和伴有异常血管的白色斑点区域中人类乳头瘤病毒(HPV)感染的重要病理生理学,VIA 筛查的灵敏度范围很广(49-98%),特异性(75-91%);这可能导致假结果和观察者间差异很大。因此,需要自动检测柱状区域(CA)、鳞柱状交界区的亚上皮区域(SCJ)和醋酸白病变,以支持准确诊断。本研究提出了一种基于掩模 RCNN 架构的方法,用于同时分割、分类和检测 CA 和 AW 病变。我们使用了 262 张 VIA+宫颈图像和 222 张 VIA-宫颈图像进行了几项实验。该模型对 CA 的交并比(IOU)性能约为 63.60%,对 AW 病变的约为 73.98%。CA 的迪赛相似系数(Dice similarity coefficient,DSC)性能约为 75.67%,AW 病变的约为 80.49%。它在宫颈癌前病变检测方面也表现良好,CA 的平均精度约为 86.90%,AW 病变的约为 100%,同时还实现了 100%的灵敏度和 92%的特异性。我们提出的基于实例分割的模型仅从 VIA 宫颈图像中就能很好地分割、检测和分类宫颈癌前病变。