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Our manuscript, "Interpretation of the Outputs of Deep Learning Model Trained with Skin Cancer Dataset" was published as a letter article in the Journal of Investigative Dermatology today (https://www.jidonline.org/article/S0022-202X(18)31992-4/fulltext).

When we train a CNN model, we somtimes get a disappointing Top-1 accuracy. I also suffered this problem and I did not understand exactly what was wrong at that time. When my early version of the 12DX paper was reviewed in JAMA dermatology 2 years ago, the biggest reason for rejection was the low Top-1 accuracy.


However, unlike general object recognition studies, it is very difficult to determine medical research results with Top-1 accuracy, and it is important that the AUC can be high even with a low Top-1 accuracy. If you look carefully, most of medical AI researches have used AUC rather than Top-(n) accuracy.

Because of small and imbalanced training data in medical researches, the analysis of each class as Top-(n) accuracy is inadequate (but the mean Top-(n) of all classes is meaningful). Top-(n) accuracy of each classes vary whenever we repeat the training of CNN with imbalanced dataset. Therefore, we should see the corrected value while using thresholds of each classes, that is ROC curve.

With the AUC results, we published "Classification of the Clinical Images for Benign and Malignant Cutaneous Tumors Using a Deep Learning Algorithm" (https://www.jidonline.org/article/S0022-202X(18)30111-8/fulltext)

There was a debate that my 12DX algorithm is not sensitive (low top-1 accuracy) with the ISIC dataset (Automated Dermatological Diagnosis: Hype or Reality?; https://www.jidonline.org/article/S0022-202X(18)31991-2/fulltext).

 

There was an additional problem as well as the Top accuracy problem.

When we analyze a clinical image, "the problem of judging whether it is melanoma or not" is easier than "the problem of matching the type of cancer".

Analyzing the output of the AI ​​(CNN) model is equivalent to "the problem of matching the type of cancer", and analyzing the ratio of output is proper if we want to analyze the problem of judging "whether cancer or not".

We interpreted the ratio of melanoma output and nevus output rather than using melanoma output alone.

RATIO (Melanoma Index) = melanoma output / (melanoma output + nevus output).

The clinical image of skin cancer consists of a nodular lesion and a background. If you want to concentrate on only the lesion, we need to analyze it with RATIO as above to get more accurate results.

In the attached photograph, (b) is "matching what cancer is" and (a) is judging "whether it is cancer or not".

We made web-DEMO (http://dx.medicalphoto.org), and we have made it possible to show what conclusions are coming up depending on the Top-5 output and how it is interpreted.

 



번호 제목 글쓴이 날짜 조회 수
1686 Mediainfo 를 이용해서 날짜 알아내기 WHRIA 2012.12.20 10405
1685 마음이 편해지는 그림 file WHRIA 2007.02.18 10356
1684 마음의 결정이 끝났습니다. WHRIA 2009.11.20 10334
1683 애드센스 수입금 - 48만원 WHRIA 2010.12.28 10277
1682 MedicalPhoto moved to http://medicalphoto.org WHRIA 2008.06.20 10104
1681 rAthena [1] file WHRIA 2016.06.26 10075
1680 어려운 결정 WHRIA 2008.10.11 10019
1679 피얼룩 지우기 WHRIA 2012.05.26 9956
1678 Trader file WHRIA 2009.11.17 9882
1677 승석이 홈페이지입니다. 한승석 2000.05.29 9874
1676 피부과 홈페이지 제작중 WHRIA 2009.11.11 9712
1675 일본으로 workshop 초청이 왔는데 못가게 되었다. [1] WHRIA 2009.11.23 9632
1674 간판 제작 업체 WHRIA 2009.10.31 9558
1673 인플레이션인가 디플레이션인가 WHRIA 2009.06.21 9546
1672 돌사진 WHRIA 2011.03.21 9446

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