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Place to start in the ECO tree
Place to start in the ECO tree
What type of evidence is the annotation based on?
What type of evidence is the annotation based on?
Evidence & Conclusion Ontology (ECO) Decision Tree
Evidence & Conclusion Ontology (ECO) Decision Tree
No 2
No
Yes 4
Yes
Not used in CACAO copy 3
Not used in CACAO
Is the computation an integrated analysis, typically including
Is the computation an integrated analysis, typically including experimental datasets?
Yes 3
Yes
ECO:0000317
ECO:0000317
Does the computation include consideration of the genomic conte
Does the computation include consideration of the genomic context of the gene?
No
No
* See sequence evidence decision tree
* See sequence evidence decision tree
ECO:0000250*
ECO:0000250*
Yes
Yes
Is the computation based purely on the sequence of the gene pr
Is the computation based purely on the sequence of the gene product (or sequence- based mapping files)?
Yes
Yes
No
No
Not used in CACAO copy 2
Not used in CACAO
Will each annotation be individually reviewed and confirmed by
Will each annotation be individually reviewed and confirmed by a human annotator?
Computational Method
Computational Method
Yes 6
Yes
Is annotation based on the expression pattern of the gene produ
Is annotation based on the expression pattern of the gene product?
Not used in CACAO copy
Not used in CACAO
Yes 5
Yes
Is annotation based on a direct assay for the function, process
Is annotation based on a direct assay for the function, process, or component of the gene product?
Yes 4
Yes
ECO:0000314
ECO:0000314
Is annotation based on a direct 1:1 physical interaction with a
Is annotation based on a direct 1:1 physical interaction with another gene product?
Not used in CACAO
Not used in CACAO
Yes 3
Yes
ECO:0000316
ECO:0000316
Is more than one gene being mutated in the same strain?
Is more than one gene being mutated in the same strain?
No
No
Yes 2
Yes
Is a single gene being mutated or compared to other alleles of
Is a single gene being mutated or compared to other alleles of the same gene?
Yes
Yes
Layer 1
Is annotation based on genetic mutations or allelic variations?
Is annotation based on genetic mutations or allelic variations?
Experimental (Wet Lab)
Experimental (Wet Lab)
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