Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:3518-3521. doi: 10.1109/EMBC48229.2022.9871140.
Onchocerciasis is causing blindness in over half a million people in the world today. Drug development for the disease is crippled as there is no way of measuring effectiveness of the drug without an invasive procedure. Drug efficacy measurement through assessment of viability of onchocerca worms requires the patients to undergo nodulectomy which is invasive, expensive, time-consuming, skill-dependent, infrastructure dependent and lengthy process. In this paper, we discuss the first-ever study that proposes use of machine learning over thermal imaging to non-invasively and accurately predict the viability of worms. The key contributions of the paper are (i) a unique thermal imaging protocol along with pre-processing steps such as alignment, registration and segmentation to extract interpretable features (ii) extraction of relevant semantic features (iii) development of accurate classifiers for detecting the existence of viable worms in a nodule. When tested on a prospective test data of 30 participants with 48 palpable nodules, we achieved an Area Under the Curve (AUC) of 0.85. Clinical Relevance- This is the first ever research effort of using thermal imaging in the assessment of viability of onchocerca worms and it resulted in a very high specificity>95% which makes it a promising modality to pursue further.
盘尾丝虫病导致当今全球超过 50 万人失明。由于没有非侵入性程序来衡量药物的有效性,该疾病的药物开发受到严重阻碍。通过评估盘尾丝虫的活力来衡量药物疗效,需要患者接受结节切除术,这是一种侵入性、昂贵、耗时、依赖技能、依赖基础设施的冗长过程。在本文中,我们讨论了第一项使用机器学习进行非侵入性和准确预测蠕虫活力的研究。本文的主要贡献有:(i) 独特的热成像方案以及预处理步骤,如对齐、配准和分割,以提取可解释的特征;(ii) 提取相关语义特征;(iii) 开发准确的分类器,用于检测结节中存活的蠕虫的存在。在对 30 名参与者的 48 个可触及结节的前瞻性测试数据进行测试时,我们获得了 0.85 的曲线下面积 (AUC)。临床意义-这是首次使用热成像评估盘尾丝虫活力的研究,其特异性>95%,这使其成为一个很有前途的研究方向。