g cue B: CS50 (acquisition) and new CS100 (reversal)] than in ot

g. cue B: CS50 (acquisition) and new CS100 (reversal)] than in others [e.g. cue C: CS100 (acquisition) and new CS- (reversal)]. Furthermore, we fitted all models individually to each subject’s behavioural data and compared the corresponding deviances summed over all subjects. These results also showed that the hybrid model resulted in a better fit than the RW model and both models provided a superior see more behavioural fit as compared with the baseline model. Thus, the results described above

could also be confirmed on an individual level (see Table 2 for corresponding deviances and results of the likelihood ratio tests). Finally, we adopted the condition-wise fitted parameters of the hybrid model fitted across subjects (Table 1B) for the subsequent imaging analysis. Figure 3 shows the corresponding fitted quantities averaged across subjects for each cue. Note that, in our implementation of the hybrid model, the associability was updated prior to the value. In a previous study (Li et al., 2011), however, where SCRs were used for model fitting (SCR data were too noisy for model fitting in the present study), the value was updated prior to the associability. As a consequence, the resulting model predicts a somewhat slower learning of sudden contingency changes, which is probably better reflected

in implicit measures of fear learning such as SCRs, whereas expectancy ratings require a model predicting faster adaptations such Ruxolitinib research buy as in the implementation of the hybrid model that we used (see

Table 1D for the behavioural model fit of both updating procedures for our data). Importantly, the different updating approaches mainly affect the value parameter, whereas the associability and PE time series (the quantities of interest in the fMRI analysis, see also Fig. 3) are basically the same in either case and also display similar characteristics as in the study of Li et al. (2011), although model fitting was based on different measures. In a first step we investigated the neural representation of the unsigned PE as a measure of immediate surprise at the time of US onset. As shown in Fig. 3, this signal decreased rapidly for the CS– and the CS100 condition, when the outcome started matching the expectations and increased strongly at the beginning of the reversal Fossariinae stage, when outcomes were surprising again. For the partially reinforced cues, the unsigned PE fluctuated more strongly and was equally high for unexpected shocks and unexpected omissions of a shock. Activity in the amygdala correlated positively with this signal (Fig. 4A and Table 3A). Comparisons with the high-detail diagram of an anatomical atlas (Mai et al., 2008) strongly suggest that the observed amygdala activation was located bilaterally in the CM (Fig. 5A for a schematic representation of amygdala subregions). This notion is further supported by the application of probabilistic maps of amygdala subregions (Amunts et al.

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