Merge branch 'master' into run_test_participant
commit
70e077f6ab
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@ -403,9 +403,10 @@ for provider in config["ALL_CLEANING_OVERALL"]["PROVIDERS"].keys():
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if config["ALL_CLEANING_OVERALL"]["PROVIDERS"][provider]["COMPUTE"]:
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files_to_compute.extend(expand("data/processed/features/all_participants/all_sensor_features_cleaned_" + provider.lower() +".csv"))
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# Demographic features
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# Baseline features
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files_to_compute.extend(expand("data/raw/baseline_merged.csv"))
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files_to_compute.extend(expand("data/raw/{pid}/participant_baseline_raw.csv", pid=config["PIDS"]))
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files_to_compute.extend(expand("data/processed/features/{pid}/baseline_features.csv", pid=config["PIDS"]))
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rule all:
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input:
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@ -634,5 +634,6 @@ PARAMS_FOR_ANALYSIS:
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results-survey358134_final.csv, # Belgium 1
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results-survey413767_final.csv # Belgium 2
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]
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QUESTION_LIST: survey637813+question_text.csv
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FEATURES: [age, gender, startlanguage]
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CATEGORICAL_FEATURES: [gender]
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@ -20,8 +20,10 @@ rule baseline_features:
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"data/raw/{pid}/participant_baseline_raw.csv"
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params:
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pid="{pid}",
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features=config["PARAMS_FOR_ANALYSIS"]["BASELINE"]["FEATURES"]
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features=config["PARAMS_FOR_ANALYSIS"]["BASELINE"]["FEATURES"],
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question_filename=config["PARAMS_FOR_ANALYSIS"]["BASELINE"]["FOLDER"] + "/" + config["PARAMS_FOR_ANALYSIS"]["BASELINE"]["QUESTION_LIST"]
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output:
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"data/processed/features/{pid}/baseline_features.csv"
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interim="data/interim/{pid}/baseline_questionnaires.csv",
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features="data/processed/features/{pid}/baseline_features.csv"
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script:
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"../src/data/baseline_features.py"
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@ -1,23 +1,177 @@
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import numpy as np
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import pandas as pd
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pid = snakemake.params["pid"]
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requested_features = snakemake.params["features"]
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baseline_interim = pd.DataFrame(columns=["qid", "question", "score_original", "score"])
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baseline_features = pd.DataFrame(columns=requested_features)
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question_filename = snakemake.params["question_filename"]
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JCQ_DEMAND = "JobEisen"
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JCQ_CONTROL = "JobControle"
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dict_JCQ_demand_control_reverse = {
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JCQ_DEMAND: {
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3: " [Od mene se ne zahteva,",
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4: " [Imam dovolj časa, da končam",
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5: " [Pri svojem delu se ne srečujem s konfliktnimi",
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},
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JCQ_CONTROL: {
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2: " |Moje delo vključuje veliko ponavljajočega",
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6: " [Pri svojem delu imam zelo malo svobode",
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},
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}
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LIMESURVEY_JCQ_MIN = 1
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LIMESURVEY_JCQ_MAX = 4
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DEMAND_CONTROL_RATIO_MIN = 5 / (9 * 4)
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DEMAND_CONTROL_RATIO_MAX = (4 * 5) / 9
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JCQ_NORMS = {
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"F": {
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0: DEMAND_CONTROL_RATIO_MIN,
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1: 0.45,
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2: 0.52,
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3: 0.62,
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4: DEMAND_CONTROL_RATIO_MAX,
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},
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"M": {
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0: DEMAND_CONTROL_RATIO_MIN,
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1: 0.41,
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2: 0.48,
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3: 0.56,
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4: DEMAND_CONTROL_RATIO_MAX,
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},
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}
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participant_info = pd.read_csv(snakemake.input[0], parse_dates=["date_of_birth"])
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if not participant_info.empty:
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if "age" in requested_features:
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now = pd.Timestamp("now")
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baseline_features.loc[0, "age"] = (
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now - participant_info.loc[0, "date_of_birth"]
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).dt.days / 365.25245
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).days / 365.25245
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if "gender" in requested_features:
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baseline_features.loc[0, "gender"] = participant_info.loc[0, "gender"]
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if "startlanguage" in requested_features:
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baseline_features.loc[0, "startlanguage"] = participant_info.loc[
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0, "startlanguage"
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]
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if (
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("demand" in requested_features)
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or ("control" in requested_features)
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or ("demand_control_ratio" in requested_features)
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):
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participant_info_t = participant_info.T
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rows_baseline = participant_info_t.index
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baseline_features.to_csv(
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snakemake.output[0], index=False, encoding="utf-8",
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if ("demand" in requested_features) or (
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"demand_control_ratio" in requested_features
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):
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# Find questions about demand, but disregard time (duration of filling in questionnaire)
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rows_demand = rows_baseline.str.startswith(
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JCQ_DEMAND
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) & ~rows_baseline.str.endswith("Time")
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limesurvey_demand = (
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participant_info_t[rows_demand]
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.reset_index()
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.rename(columns={"index": "question", 0: "score_original"})
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)
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# Extract question IDs from names such as JobEisen[3]
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limesurvey_demand.loc[:, "qid"] = (
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limesurvey_demand["question"].str.extract(r"\[(\d+)\]").astype(int)
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)
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limesurvey_demand["score"] = limesurvey_demand["score_original"]
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# Identify rows that include questions to be reversed.
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rows_demand_reverse = limesurvey_demand["qid"].isin(
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dict_JCQ_demand_control_reverse[JCQ_DEMAND].keys()
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)
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# Reverse the score, so that the maximum value becomes the minimum etc.
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limesurvey_demand.loc[rows_demand_reverse, "score"] = (
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LIMESURVEY_JCQ_MAX
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+ LIMESURVEY_JCQ_MIN
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- limesurvey_demand.loc[rows_demand_reverse, "score_original"]
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)
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pd.concat([baseline_interim, limesurvey_demand], axis=0, ignore_index=True)
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if "demand" in requested_features:
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baseline_features.loc[0, "limesurvey_demand"] = limesurvey_demand[
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"score"
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].sum()
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if ("control" in requested_features) or (
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"demand_control_ratio" in requested_features
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):
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# Find questions about control, but disregard time (duration of filling in questionnaire)
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rows_control = rows_baseline.str.startswith(
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JCQ_CONTROL
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) & ~rows_baseline.str.endswith("Time")
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limesurvey_control = (
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participant_info_t[rows_control]
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.reset_index()
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.rename(columns={"index": "question", 0: "score_original"})
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)
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# Extract question IDs from names such as JobControle[3]
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limesurvey_control.loc[:, "qid"] = (
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limesurvey_control["question"].str.extract(r"\[(\d+)\]").astype(int)
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)
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limesurvey_control["score"] = limesurvey_control["score_original"]
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# Identify rows that include questions to be reversed.
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rows_control_reverse = limesurvey_control["qid"].isin(
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dict_JCQ_demand_control_reverse[JCQ_CONTROL].keys()
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)
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# Reverse the score, so that the maximum value becomes the minimum etc.
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limesurvey_control.loc[rows_control_reverse, "score"] = (
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LIMESURVEY_JCQ_MAX
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+ LIMESURVEY_JCQ_MIN
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- limesurvey_control.loc[rows_control_reverse, "score_original"]
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)
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pd.concat([baseline_interim, limesurvey_control], axis=0, ignore_index=True)
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if "control" in requested_features:
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baseline_features.loc[0, "limesurvey_control"] = limesurvey_control[
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"score"
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].sum()
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if "demand_control_ratio" in requested_features:
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limesurvey_demand_control_ratio = (
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limesurvey_demand["score"].sum() / limesurvey_control["score"].sum()
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)
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if (
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JCQ_NORMS[participant_info.loc[0, "gender"]][0]
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<= limesurvey_demand_control_ratio
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< JCQ_NORMS[participant_info.loc[0, "gender"]][1]
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):
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limesurvey_quartile = 1
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elif (
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JCQ_NORMS[participant_info.loc[0, "gender"]][1]
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<= limesurvey_demand_control_ratio
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< JCQ_NORMS[participant_info.loc[0, "gender"]][2]
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):
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limesurvey_quartile = 2
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elif (
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JCQ_NORMS[participant_info.loc[0, "gender"]][2]
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<= limesurvey_demand_control_ratio
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< JCQ_NORMS[participant_info.loc[0, "gender"]][3]
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):
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limesurvey_quartile = 3
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elif (
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JCQ_NORMS[participant_info.loc[0, "gender"]][3]
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<= limesurvey_demand_control_ratio
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< JCQ_NORMS[participant_info.loc[0, "gender"]][4]
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):
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limesurvey_quartile = 4
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else:
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limesurvey_quartile = np.nan
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baseline_features.loc[
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0, "limesurvey_demand_control_ratio"
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] = limesurvey_demand_control_ratio
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baseline_features.loc[
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0, "limesurvey_demand_control_ratio_quartile"
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] = limesurvey_quartile
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if not baseline_interim.empty:
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baseline_interim.to_csv(snakemake.output["interim"], index=False, encoding="utf-8")
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baseline_features.to_csv(snakemake.output["features"], index=False, encoding="utf-8")
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