/ACP-Kernel-SRC

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ACP-Kernel-SRC

ACP_SRC

implementation of Sparse Representation classifier on Anticancer piptides
Data_set used for different models scraped from below given links

1_for acp_344:

a. https://raw.githubusercontent.com/Shujaat123/ACP_LSE/main/dataset_acp_JTB_2014/1-s2.0-S0022519313004190-mmc1.txt.

b. https://raw.githubusercontent.com/Shujaat123/ACP_LSE/main/dataset_acp_JTB_2014/1-s2.0-S0022519313004190-mmc2.txt

2_for acp_740 and acp_240 :

a. https://raw.githubusercontent.com/haichengyi/ACP-DL/master/acp740.txt

b. https://raw.githubusercontent.com/haichengyi/ACP-DL/master/acp240.txt

NOTE:Due to any reason if you cannot download data set from above link then data set also available in our Data_set.zip folder.

No of ACP and NON-ACP in data set are given below:

DATA_SET ACP NON_ACP
ACP_740 376 364
COMBINED_DATA_SET 505 475
ACP_344 138 206

Performance Results:

model SEN SPEC F1_SCORE B_ACC Y_I MCC
ACP_Kernel-SRC_740 86.23 81.62 0.84 83.94 0.67 67.11
ACP_Kernel-SRC_344 97.07 86.97 94.11 91.89 0.84 0.85

we have implemented our Kernel-SRC model on acp_740 data_set ,Combine both acp_740 and acp_240 data set and then implement our kernel-SRC model and compare with LSTM model from ACP_DA paper[1]. we have also implemented our Kernel-SRC model on ACP_344 data set and compare our result with paper[2]. Our model perfomance on both data_Set is better than papers model. All figures of the Kernel-SRC model inlcuded in Figures folder

Refrences:

1.https://www.frontiersin.org/articles/10.3389/fgene.2021.698477/full

2.https://www.frontiersin.org/articles/10.3389/fbioe.2020.00892/full