| Literature DB >> 36010322 |
Gerardo Cazzato1, Alessandro Massaro2,3, Anna Colagrande1, Teresa Lettini1, Sebastiano Cicco4, Paola Parente5, Eleonora Nacchiero6, Lucia Lospalluti7, Eliano Cascardi8,9, Giuseppe Giudice6, Giuseppe Ingravallo1, Leonardo Resta1, Eugenio Maiorano1, Angelo Vacca4.
Abstract
The application of artificial intelligence (AI) algorithms in medicine could support diagnostic and prognostic analyses and decision making. In the field of dermatopathology, there have been various papers that have trained algorithms for the recognition of different types of skin lesions, such as basal cell carcinoma (BCC), seborrheic keratosis (SK) and dermal nevus. Furthermore, the difficulty in diagnosing particular melanocytic lesions, such as Spitz nevi and melanoma, considering the grade of interobserver variability among dermatopathologists, has led to an objective difficulty in training machine learning (ML) algorithms to a totally reliable, reportable and repeatable level. In this work we tried to train a fast random forest (FRF) algorithm, typically used for the classification of clusters of pixels in images, to highlight anomalous areas classified as melanoma "defects" following the Allen-Spitz criteria. The adopted image vision diagnostic protocol was structured in the following steps: image acquisition by selecting the best zoom level of the microscope; preliminary selection of an image with a good resolution; preliminary identification of macro-areas of defect in each preselected image; identification of a class of a defect in the selected macro-area; training of the supervised machine learning FRF algorithm by selecting the micro-defect in the macro-area; execution of the FRF algorithm to find an image vision performance indicator; and analysis of the output images by enhancing lesion defects. The precision achieved by the FRF algorithm proved to be appropriate with a discordance of 17% with respect to the dermatopathologist, allowing this type of supervised algorithm to be nominated as a help to the dermatopathologist in the challenging diagnosis of malignant melanoma.Entities:
Keywords: AI; algorithms; artificial intelligence; fast random forest (FRF); malignant melanoma; skin; software
Year: 2022 PMID: 36010322 PMCID: PMC9407151 DOI: 10.3390/diagnostics12081972
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Summary of these criteria.
| Dysplastic Nevus | Malignant Melanoma |
|---|---|
|
| |
| Lentiginous or contiguous melanocytic hyperplasia | Poor circumscription of the intraepidermal melanocytic component of the lesion |
| Focal melanocytic atypia | Increased number of melanocytes, solitary and in nests, within and above the epidermal basal cell layer and within adnexal epithelia (pagetoid spreading) |
| Marked variation in size and shape of the melanocytic nests | |
| Absence of maturation of melanocytes with descent into the dermis | |
| Melanocytes in mitosis | |
|
| |
| “Shoulder phenomenon” | Melanocytes with nuclear atypia |
| Fusion of epithelial cones | Necrosis or degeneration of melanocytes |
| Subepidermal concentric lamellar fibrosis |
Figure 1Image processing procedure based on pixel feature training and random forest classifier.
Figure 2This figure illustrates the error metric (precision parameter [5]) of the adopted FRF algorithm versus iteration number (instance number) by proving that the final results are characterized by the maximum precision.
Figure 3Example of analysis and selection of defects (such as architectural and cytological atypia, pagetoid spreading, possible ulceration) in the macro-area of an image of malignant melanoma. Note the different colors of the circles/ellipses used to subclassify the anomalies (defects).
Example of analysis of two micrographs of malignant melanoma in which some constituent elements of the Allen–Spitz criteria have been analyzed, such as: symmetrical or asymmetrical lesion, clustering of melanocytes in nests or presence of single melanocyte, and eventual pagetoid spreading.
| Original Image | Defect Type (Name) | Defect Cluster (Enhanced Probability Image) | Percentage Presence on the Whole Image | Extension [mm2] |
|---|---|---|---|---|
| IMG00131 EE | // |
| 5.3% | 0.106 |
| IMG00132 EE | // |
| 4.1% | 0.082 |
Example of two other images whose cytological characteristics were studied, including: cellular atypia, eventual pagetoid spreading, mitosis and nuclear pleomorphism.
| Original Image | Defect Type (Name) | Defect Cluster (Enhanced Probability Image) | Percentage Presence on the Whole Image | Extension [mm2] |
|---|---|---|---|---|
| IMG00150 | // |
| 6.6% | 0.132 |
| IMG00151 | // |
| 8.8% | 0.176 |