利用优化决策算法的拉曼光谱检测巨结肠病肠粘膜特征的无标签诊断方法。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Yusuke Oshima, Yuki Matsumoto, Katsuhiro Ogawa, Kai Tamura, Rena Yagi, Noritaka Fujisawa, Takashi Katagiri, Shun Onishi, Hidefumi Shiroshita, Tsuyoshi Etho, Tsutomu Daa, Satoshi Ieiri, Masafumi Inomata
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引用次数: 0

摘要

目的:巨结肠病(HSCR)是一种肠道疾病,其特征是部分肠道缺乏神经细胞。明确的诊断是通过全层直肠活检来证实神经节细胞的缺失。然而,不完全切除常引起术后并发症。建立一种针对HSCR神经节病粘膜的光学活检技术,并通过另一种光学成像方式和组织病理学证实其能力。方法:拉曼光谱(RS)是一种新兴的无染色组织诊断技术,可以支持传统的诊断和治疗方法,以获得更精确的HSCR结果。我们展示了基于RS技术与微调机器学习算法相结合的HSCR中神经节段无标记检测的概念验证。结果:RS可区分病变粘膜表面的神经节节段特征。在多光子显微镜下证实了形态学的改变。此外,利用卷积神经网络和结合梯度增强框架的决策树建立了判别模型并对其进行了评价。结论:所提出的方法和模型准确率在90%以上,对3例HSCR患者进行了伪盲检查,具有临床应用的可行性。(195字)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Label-free diagnostic procedure for hirschsprung's disease to detect intestinal mucosal characteristics of aganglionosis by Raman spectroscopy with optimized decision algorithms.

Label-free diagnostic procedure for hirschsprung's disease to detect intestinal mucosal characteristics of aganglionosis by Raman spectroscopy with optimized decision algorithms.

Label-free diagnostic procedure for hirschsprung's disease to detect intestinal mucosal characteristics of aganglionosis by Raman spectroscopy with optimized decision algorithms.

Label-free diagnostic procedure for hirschsprung's disease to detect intestinal mucosal characteristics of aganglionosis by Raman spectroscopy with optimized decision algorithms.

Purpose: Hirschsprung's disease (HSCR) is an intestinal disorder characterized by the absence of nerve cells in parts of the intestinal tract. The definitive diagnosis is confirmed by a full-thickness rectal biopsy to verify the absence of ganglion cells. However, incomplete removal often causes post-operative complications. To establish an optical biopsy technique for targeting mucosa with aganglionosis of HSCR and to confirm its capability by another optical imaging modality and histopathology.

Methods: Raman spectroscopy (RS) is an emerging technique in tissue diagnosis without staining that makes it possible to support conventional diagnostics and therapeutics for achieving more precise outcomes in HSCR. We demonstrate the proof-of-concept for label-free detection of the aganglionic segment in HSCR based on an RS technique in combination with fine-tuned machine learning algorithms.

Results: RS distinguished the characteristics of aganglionic segments in the mucosal surface of the lesion. The altered morphology was confirmed by multiphoton microscopy. In addition, discrimination models were built and evaluated by convolutional neural networks and the decision tree combined with gradient boosting framework.

Conclusion: The proposed method and model show a high accuracy above 90% and a pseudo-blind examination involving three HSCR patients implies the feasibility for clinical application. (195 words).

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来源期刊
Lasers in Medical Science
Lasers in Medical Science 医学-工程:生物医学
CiteScore
4.50
自引率
4.80%
发文量
192
审稿时长
3-8 weeks
期刊介绍: Lasers in Medical Science (LIMS) has established itself as the leading international journal in the rapidly expanding field of medical and dental applications of lasers and light. It provides a forum for the publication of papers on the technical, experimental, and clinical aspects of the use of medical lasers, including lasers in surgery, endoscopy, angioplasty, hyperthermia of tumors, and photodynamic therapy. In addition to medical laser applications, LIMS presents high-quality manuscripts on a wide range of dental topics, including aesthetic dentistry, endodontics, orthodontics, and prosthodontics. The journal publishes articles on the medical and dental applications of novel laser technologies, light delivery systems, sensors to monitor laser effects, basic laser-tissue interactions, and the modeling of laser-tissue interactions. Beyond laser applications, LIMS features articles relating to the use of non-laser light-tissue interactions.
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