TY - JOUR
T1 - The Impact of Melanoma Imaging Biomarker Cues on Detection Sensitivity and Specificity in Melanoma versus Clinically Atypical Nevi
AU - Agüero, Rosario
AU - Buchanan, Kendall L.
AU - Navarrete-Dechent, Cristián
AU - Marghoob, Ashfaq A.
AU - Stein, Jennifer A.
AU - Landy, Michael S.
AU - Leachman, Sancy A.
AU - Linden, Kenneth G.
AU - Garcet, Sandra
AU - Krueger, James G.
AU - Gareau, Daniel S.
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2024/9
Y1 - 2024/9
N2 - Incorporation of dermoscopy and artificial intelligence (AI) is improving healthcare professionals’ ability to diagnose melanoma earlier, but these algorithms often suffer from a “black box” issue, where decision-making processes are not transparent, limiting their utility for training healthcare providers. To address this, an automated approach for generating melanoma imaging biomarker cues (IBCs), which mimics the screening cues used by expert dermoscopists, was developed. This study created a one-minute learning environment where dermatologists adopted a sensory cue integration algorithm to combine a single IBC with a risk score built on many IBCs, then immediately tested their performance in differentiating melanoma from benign nevi. Ten participants evaluated 78 dermoscopic images, comprised of 39 melanomas and 39 nevi, first without IBCs and then with IBCs. Participants classified each image as melanoma or nevus in both experimental conditions, enabling direct comparative analysis through paired data. With IBCs, average sensitivity improved significantly from 73.69% to 81.57% (p = 0.0051), and the average specificity improved from 60.50% to 67.25% (p = 0.059) for the diagnosis of melanoma. The index of discriminability (d′) increased significantly by 0.47 (p = 0.002). Therefore, the incorporation of IBCs can significantly improve physicians’ sensitivity in melanoma diagnosis. While more research is needed to validate this approach across other healthcare providers, its use may positively impact melanoma screening practices.
AB - Incorporation of dermoscopy and artificial intelligence (AI) is improving healthcare professionals’ ability to diagnose melanoma earlier, but these algorithms often suffer from a “black box” issue, where decision-making processes are not transparent, limiting their utility for training healthcare providers. To address this, an automated approach for generating melanoma imaging biomarker cues (IBCs), which mimics the screening cues used by expert dermoscopists, was developed. This study created a one-minute learning environment where dermatologists adopted a sensory cue integration algorithm to combine a single IBC with a risk score built on many IBCs, then immediately tested their performance in differentiating melanoma from benign nevi. Ten participants evaluated 78 dermoscopic images, comprised of 39 melanomas and 39 nevi, first without IBCs and then with IBCs. Participants classified each image as melanoma or nevus in both experimental conditions, enabling direct comparative analysis through paired data. With IBCs, average sensitivity improved significantly from 73.69% to 81.57% (p = 0.0051), and the average specificity improved from 60.50% to 67.25% (p = 0.059) for the diagnosis of melanoma. The index of discriminability (d′) increased significantly by 0.47 (p = 0.002). Therefore, the incorporation of IBCs can significantly improve physicians’ sensitivity in melanoma diagnosis. While more research is needed to validate this approach across other healthcare providers, its use may positively impact melanoma screening practices.
KW - artificial intelligence
KW - dermoscopy
KW - imaging biomarkers
KW - melanoma
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U2 - 10.3390/cancers16173077
DO - 10.3390/cancers16173077
M3 - Article
AN - SCOPUS:85203622196
SN - 2072-6694
VL - 16
JO - Cancers
JF - Cancers
IS - 17
M1 - 3077
ER -