Mahmood Tahir, Ullah Zeeshan, Latif Atif, Sultan Binish Arif, Zubair Muhammad, Ullah Zahid, Ansari AbuZar, Zehra Talat, Ahmed Shahzad, Dilshad Naqqash
Division of Electronics and Electrical Engineering, Dongguk University, Seoul 04620, Republic of Korea.
Department of Neurophysiology, Cork University Hospital, T12 DC4A Cork, Ireland.
Diagnostics (Basel). 2024 Dec 21;14(24):2877. doi: 10.3390/diagnostics14242877.
Spontaneous abortion, commonly known as miscarriage, is a significant concern during early pregnancy. Histopathological examination of tissue samples is a widely used method to diagnose and classify tissue phenotypes found in products of conception (POC) after spontaneous abortion. Histopathological examination is subjective and dependent on the skill and experience of the examiner. In recent years, artificial intelligence (AI)-based techniques have emerged as a promising tool in medical imaging, offering the potential to revolutionize tissue phenotyping and improve the accuracy and reliability of the histopathological examination process. The goal of this study was to investigate the use of AI techniques for the detection of various tissue phenotypes in POC after spontaneous abortion and evaluate the accuracy and reliability of these techniques compared to traditional manual methods. We present a novel publicly available dataset named HistoPoC, which is believed to be the first of its kind, focusing on spontaneous abortion (miscarriage) in early pregnancy. A diverse dataset of 5666 annotated images was prepared from previously diagnosed cases of POC from Atia General Hospital, Karachi, Pakistan, for this purpose. The digital images were prepared at 10× through a camera-connected microscope by a consultant histopathologist. The dataset's effectiveness was validated using several deep learning-based models, demonstrating its applicability and supporting its use in intelligent diagnostic systems. The insights gained from this study could illuminate the causes of spontaneous abortion and guide the development of novel treatments. Additionally, this study could contribute to advancements in the field of tissue phenotyping and the wider application of deep learning techniques in medical diagnostics and treatment.
自然流产,通常称为流产,是早期妊娠期间的一个重大问题。对组织样本进行组织病理学检查是一种广泛用于诊断和分类自然流产后妊娠产物(POC)中发现的组织表型的方法。组织病理学检查具有主观性,并且依赖于检查人员的技能和经验。近年来,基于人工智能(AI)的技术已成为医学成像领域一种有前途的工具,有望彻底改变组织表型分析,并提高组织病理学检查过程的准确性和可靠性。本研究的目的是调查使用AI技术检测自然流产后POC中的各种组织表型,并评估这些技术与传统手动方法相比的准确性和可靠性。我们提出了一个名为HistoPoC的新型公开可用数据集,据信这是同类数据集中的第一个,专注于早期妊娠中的自然流产(流产)。为此,从巴基斯坦卡拉奇阿提亚综合医院先前诊断的POC病例中准备了一个包含5666张带注释图像的多样化数据集。这些数字图像由一位顾问组织病理学家通过连接相机的显微镜以10倍放大倍数制备。使用几种基于深度学习的模型验证了该数据集的有效性,证明了其适用性并支持其在智能诊断系统中的使用。从这项研究中获得的见解可以阐明自然流产的原因,并指导新治疗方法的开发。此外,这项研究可以促进组织表型分析领域的进展以及深度学习技术在医学诊断和治疗中的更广泛应用。