Automated melanoma detection with a novel multispectral imaging system: results of a prospective study

被引:79
作者
Tomatis, S
Carrara, M
Bono, A
Bartoli, C
Lualdi, M
Tragni, G
Colombo, A
Marchesini, R
机构
[1] Ist Nazl Studio & Cura Tumori, Dept Med Phys, I-20133 Milan, Italy
[2] Ist Nazl Studio & Cura Tumori, Malanooma & Sarcoma Unit, I-20133 Milan, Italy
[3] Ist Nazl Studio & Cura Tumori, Day Surg Unit, I-20133 Milan, Italy
[4] Ist Nazl Studio & Cura Tumori, Dept Pathol & Cytopathol, I-20133 Milan, Italy
关键词
D O I
10.1088/0031-9155/50/8/004
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
The aim of this research was to evaluate the performance of anew spectroscopic system in the diagnosis of melanoma. This study involves a consecutive series of 1278 patients with 1391 cutaneous pigmented lesions including 184 melanomas. In an attempt to approach the 'real world' of lesion population, a further set of 1022 not excised clinically reassuring lesions was also considered for analysis. Each lesion was imaged in vivo by a multispectral imaging system. The system operates at wavelengths between 483 and 950 nm by acquiring 15 images at equally spaced wavelength intervals. From the images, different lesion descriptors were extracted related to the colour distribution and morphology of the lesions. Data reduction techniques were applied before setting up a neural network classifier designed to perform automated diagnosis. The data set was randomly divided into three sets: train (696 lesions, including 90 melanomas) and verify (348 lesions, including 53 melanomas) for the instruction of a proper neural network, and an independent test set (347 lesions, including 41 melanomas). The neural network was able to discriminate between melanomas and non-melanoma lesions with a sensitivity of 80.4% and a specificity of 75.6% in the 1391 histologized cases data set. No major variations were found in classification scores when train, verify and test subsets were separately evaluated. Following receiver operating characteristic (ROC) analysis, the resulting area under the curve was 0.85. No significant differences were found among areas under train, verify and test set curves, supporting the good network ability to generalize for new cases. In addition, specificity and area under ROC curve increased up to 90% and 0.90, respectively, when the additional set of 1022 lesions without histology was added to the test set. Our data show that performance of an automated system is greatly population dependent, suggesting caution in the comparison with results reported in the literature. In our opinion, scientific reports should provide, at least, the median values of thickness and dimension of melanomas, as well as the number of small (<= 6 mm) melanomas.
引用
收藏
页码:1675 / 1687
页数:13
相关论文
共 27 条
[1]  
ASHLEY J, 1995, OPTICAL THERMAL RESP
[2]   Prognostic factors analysis of 17,600 melanoma patients: Validation of the American Joint Committee on Cancer melanoma staging system [J].
Balch, CM ;
Soong, SJ ;
Gershenwald, JE ;
Thompson, JF ;
Reintgen, DS ;
Cascinelli, N ;
Urist, M ;
McMasters, KM ;
Ross, MI ;
Kirkwood, JM ;
Atkins, MB ;
Thompson, JA ;
Coit, DG ;
Byrd, D ;
Desmond, R ;
Zhang, YT ;
Liu, PY ;
Lyman, GH ;
Morabito, A .
JOURNAL OF CLINICAL ONCOLOGY, 2001, 19 (16) :3622-3634
[3]   EPILUMINESCENCE MICROSCOPY - A USEFUL TOOL FOR THE DIAGNOSIS OF PIGMENTED SKIN-LESIONS FOR FORMALLY TRAINED DERMATOLOGISTS [J].
BINDER, M ;
SCHWARZ, M ;
WINKLER, A ;
STEINER, A ;
KAIDER, A ;
WOLFF, K ;
PEHAMBERGER, H .
ARCHIVES OF DERMATOLOGY, 1995, 131 (03) :286-291
[4]  
Bishop C. M., 1996, Neural networks for pattern recognition
[5]   Micro-melanoma detection. A clinical study on 22 cases of melanoma with a diameter equal to or less than 3 mm [J].
Bono, A ;
Bartoll, C ;
Baldi, M ;
Moglia, D ;
Tomatis, S ;
Tragni, G ;
Cascinelli, N ;
Santinami, M .
TUMORI, 2004, 90 (01) :128-131
[6]  
Bono A, 2002, EUR J DERMATOL, V12, P573
[7]   Small melanomas: a clinical study on 270 consecutive cases of cutaneous melanoma [J].
Bono, A ;
Bartoli, C ;
Moglia, D ;
Maurichi, A ;
Camerini, T ;
Grassi, G ;
Tragni, G ;
Cascinelli, N .
MELANOMA RESEARCH, 1999, 9 (06) :583-586
[8]   Automatic differentiation of melanoma from melanocytic nevi with multispectral digital dermoscopy: A feasibility study [J].
Elbaum, M ;
Kopf, AW ;
Rabinovitz, HS ;
Langley, RGB ;
Kamino, H ;
Mihm, MC ;
Sober, AJ ;
Peck, GL ;
Bogdan, A ;
Gutkowitcz-Krusin, D ;
Greenebaum, M ;
Keem, S ;
Oliviero, M ;
Wang, S .
JOURNAL OF THE AMERICAN ACADEMY OF DERMATOLOGY, 2001, 44 (02) :207-218
[9]  
ELDER DE, 1991, ATLAS TUMOR PATHOL, P110
[10]   Multispectral imaging approach in the diagnosis of cutaneous melanoma: potentiality and limits [J].
Farina, B ;
Bartoli, C ;
Bono, A ;
Colombo, A ;
Lualdi, M ;
Tragni, G ;
Marchesini, R .
PHYSICS IN MEDICINE AND BIOLOGY, 2000, 45 (05) :1243-1254