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Machine Learning Methods Using Texture Feature Selection in Diagnosis of Liver Cancer
* 1 , 1 , 2 , 1
1  Southeast University, Nanjing, China
2  Department of Computer Science, Govt Associate College for Women Ahmadpur East, Bahawalpur, Pakistan.
Academic Editor: Humbert G. Díaz

Abstract:

The liver is essential to a wide variety of physiological and metabolic activities that take place in our bodies. A lack of liver function or liver dysfunction can lead to various health issues, the most serious of which is the illness. Early identification of liver illness can help shorten the treatment duration and minimize liver damage by decreasing the usage of drugs that are not essential. The application of machine learning techniques in medicine has shown promising results in illness diagnosis due to advances in technology. This research aimed to discover the essential characteristics of the data set, using textural feature selection methods so that they could be applied in the early diagnosis of liver disorders. This was done in order to diagnose liver failure disease. The model in machine learning methods has been improved, which has led to an improvement in the success rate of illness detection. The results obtained were compared with the findings of other research published in the literature that used the same data set. The diagnostic success rate for liver failure illness, as determined by applying machine learning algorithms known as Decision Trees (DT), was 94.67%. It is hoped that the developed models may assist medical professionals in the early detection of liver illness.

Keywords: Liver Cancer, Texture Features, Machine Learning, Random Forest
Comments on this paper
Iratxe Aguado-Ruiz
Dear authors thank you for your support to the conference.
Now we closed the publication phase and launched the post-publication phase of the conference. REVIEWWWERS'08 Brainstorming Workshop is now open from 2023-Jan-01 to 2023-Jan-31. MOL2NET Committee, Authors, and Validated Social Media Followers Worldwide are invited to post moderated questions/answers, comments, about papers. Please kindly post your public answers (A) to the following questions in order to promote interchange of scientific ideas. These are my questions (Q) to you:
Q1. Is this technique applicable to everyday medicine?
Q2. What is the source of your medical imaging data? Is it representative of different populations strata by age, etc.?
Dear author thanks in advance for your kind support answering the questions. Now, please become a verified REVIEWWWER of our conference by making questions to other papers in different Mol2Net congresses. Commenting Steps: Login, Go to Papers List, Select Paper, Write Comment, Click Post Comment. Papers list: https://mol2net-08.sciforum.net/presentations/view,
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Samreen Naeem
Reply 1; YES

Reply 2: We collect CT image data from our local hospital (Bahawal victoria Hospital bahawalpur Pakistan).
Yes populations was different by age.



 
 
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