# README The README is usually the starting point for researchers using your data and serves as a guidepost for users of your data. A clear and informative README makes your data much more usable. In general you can include information in the README that is not captured by some other files in the BIDS dataset (dataset_description.json, events.tsv, ...). It can also be useful to also include information that might already be present in another file of the dataset but might be important for users to be aware of before preprocessing or analysing the data. If the README gets too long you have the possibility to create a `/doc` folder and add it to the `.bidsignore` file to make sure it is ignored by the BIDS validator. More info here: https://neurostars.org/t/where-in-a-bids-dataset-should-i-put-notes-about-individual-mri-acqusitions/17315/3 ## Details related to access to the data - [ ] Data user agreement If the dataset requires a data user agreement, link to the relevant information. - [ ] Contact person Indicate the name and contact details (email and ORCID) of the person responsible for additional information. - [ ] Practical information to access the data If there is any special information related to access rights or how to download the data make sure to include it. For example, if the dataset was curated using datalad, make sure to include the relevant section from the datalad handbook: http://handbook.datalad.org/en/latest/basics/101-180-FAQ.html#how-can-i-help-others-get-started-with-a-shared-dataset ## Overview - [ ] Project name (if relevant) - [ ] Year(s) that the project ran If no `scans.tsv` is included, this could at least cover when the data acquisition starter and ended. Local time of day is particularly relevant to subject state. - [ ] Brief overview of the tasks in the experiment A paragraph giving an overview of the experiment. This should include the goals or purpose and a discussion about how the experiment tries to achieve these goals. - [ ] Description of the contents of the dataset An easy thing to add is the output of the bids-validator that describes what type of data and the number of subject one can expect to find in the dataset. - [ ] Independent variables A brief discussion of condition variables (sometimes called contrasts or independent variables) that were varied across the experiment. - [ ] Dependent variables A brief discussion of the response variables (sometimes called the dependent variables) that were measured and or calculated to assess the effects of varying the condition variables. This might also include questionnaires administered to assess behavioral aspects of the experiment. - [ ] Control variables A brief discussion of the control variables --- that is what aspects were explicitly controlled in this experiment. The control variables might include subject pool, environmental conditions, set up, or other things that were explicitly controlled. - [ ] Quality assessment of the data Provide a short summary of the quality of the data ideally with descriptive statistics if relevant and with a link to more comprehensive description (like with MRIQC) if possible. ## Methods ### Subjects A brief sentence about the subject pool in this experiment. Remember that `Control` or `Patient` status should be defined in the `participants.tsv` using a group column. - [ ] Information about the recruitment procedure - [ ] Subject inclusion criteria (if relevant) - [ ] Subject exclusion criteria (if relevant) ### Apparatus A summary of the equipment and environment setup for the experiment. For example, was the experiment performed in a shielded room with the subject seated in a fixed position. ### Initial setup A summary of what setup was performed when a subject arrived. ### Task organization How the tasks were organized for a session. This is particularly important because BIDS datasets usually have task data separated into different files.) - [ ] Was task order counter-balanced? - [ ] What other activities were interspersed between tasks? - [ ] In what order were the tasks and other activities performed? ### Task details As much detail as possible about the task and the events that were recorded. ### Additional data acquired A brief indication of data other than the imaging data that was acquired as part of this experiment. In addition to data from other modalities and behavioral data, this might include questionnaires and surveys, swabs, and clinical information. Indicate the availability of this data. This is especially relevant if the data are not included in a `phenotype` folder. https://bids-specification.readthedocs.io/en/stable/03-modality-agnostic-files.html#phenotypic-and-assessment-data ### Experimental location This should include any additional information regarding the the geographical location and facility that cannot be included in the relevant json files. ### Missing data Mention something if some participants are missing some aspects of the data. This can take the form of a processing log and/or abnormalities about the dataset. Some examples: - A brain lesion or defect only present in one participant - Some experimental conditions missing on a given run for a participant because of some technical issue. - Any noticeable feature of the data for certain participants - Differences (even slight) in protocol for certain participants. ### Notes Any additional information or pointers to information that might be helpful to users of the dataset. Include qualitative information related to how the data acquisition went.