Artificial intelligence-based PRO score assessment in actinickeratoses from LC-OCT imaging using Convolutional NeuralNetworks

被引:0
|
作者
Thamm, Janis R. [1 ]
Daxenberger, Fabia [2 ]
Viel, Theo [3 ]
Gust, Charlotte [2 ]
Eijkenboom, Quirine [2 ]
French, Lars E. [2 ]
Welzel, Julia [1 ]
Sattler, Elke C. [2 ]
Schuh, Sandra [1 ]
机构
[1] Univ Augsburg, Abt Dermatol & Allergol, Univ Klinikum, Augsburg, Germany
[2] LMU Munchen, Univ Klinikum, Abt Dermatol & Allergol, Munich, Germany
[3] DAMAE Med Paris, Paris, France
关键词
Aktinische Keratosen; Convolutional Neural Networks; kunstliche Intelligenz; LC-OCT; nichtinvasive Diagnostik; PRO-Score; Actinic keratoses; artificial intelligence; non-invasive diagnostics; PRO score; ACTINIC KERATOSIS; CLASSIFICATION;
D O I
10.1111/ddg.15194_g
中图分类号
R75 [皮肤病学与性病学];
学科分类号
100206 ;
摘要
Background and Objectives:The histological PRO score (I-III) helps to assess themalignant potential of actinic keratoses (AK) by grading the dermal-epidermaljunction (DEJ) undulation. Line-field confocal optical coherence tomography (LC-OCT) provides non-invasive real-time PRO score quantification. From LC-OCTimaging data, training of an artificial intelligence (AI), using Convolutional Neu-ral Networks (CNNs) for automated PRO score quantification of AKin vivomay beachieved. Patients and Methods:CNNs were trained to segment LC-OCT images ofhealthy skin and AK. PRO score models were developed in accordance with thehistopathological gold standard and trained on a subset of 237 LC-OCT AK imagesand tested on 76 images, comparing AI-computed PRO score to the imagingexperts'visual consensus. Results:Significant agreement was found in 57/76 (75%) cases. AI-automatedgrading correlated best with the visual score for PRO II (84.8%) vs. PRO III (69.2%)vs. PRO I (66.6%). Misinterpretation occurred in 25% of the cases mostly due toshadowing of the DEJ and disruptive features such as hair follicles. Conclusions:The findings suggest that CNNs are helpful for automated PRO scorequantification in LC-OCT images. This may provide the clinician with a feasible toolfor PRO score assessment in the follow-up of AK.
引用
收藏
页码:1359 / 1368
页数:10
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