Our findings provide evidence that movements of objects within the visual field disrupt balance control in PwMS. As hypothesized, both PwMS and healthy controls altered gait in response to visual oscillations of the scene (i.e., the entire visual field). This was demonstrated by visuomotor entrainment, manifested by coherence of the medial-lateral CoM and visual field oscillation signals. In addition, we observed increased peak-to-peak CoM movement in the medial-lateral direction, increased variance of the CoM movement and increased SW with scene oscillations in both groups. However, only PwMS demonstrated evidence of instability in dynamic balance control with visual object motion, as demonstrated by increased variability in CoM sway, variability in step width, and control of foot placement. As we discuss in more detail below, we interpret these findings to suggest that PwMS likely misinterpret object movement as self-movement, causing a disruption in balance control during ambulation. This knowledge increases our understanding of potential causes of falls in MS and might be used to provide more clinically relevant rehabilitation regimens.
We observed entrainment of CoM movement with visual scene oscillations while walking on the treadmill in both PwMS and controls. Our observations are consistent with previous studies that show oscillatory movement of the CoM is altered from normal ambulation to reflect visual oscillation driving frequencies [27, 30, 31]. Processed information about the optical flow and motion parallax is typically interpreted as providing information about current heading and self-motion [27]. While visual cuing of self-motion from the visual oscillations contradicts vestibular and proprioceptive feedback, the visual system is preferentially utilized in the perception of motion [45] and corrective movements to gait were made in response to visual cues in the current study. Increased CoM sway in response to visual oscillations during ambulation indicates an increased gain in visual feedback for balance control in the elderly, who are at higher risk of falls [31]. In contrast, our study indicated that both PwMS (who are at higher risk of falls) and healthy controls react similarly to simulated self-motion via scene oscillations. Evidence of visuomotor entrainment was illustrated in both groups with high coherence values (~ 0.8) at the visual scene stimulus frequencies and increases in average peak-to-peak CoM sway.
In this study, oscillations of objects within the visual field challenged gait in PwMS. During gait, trees in the scene visually swayed left to right at a low frequency (pairing of 0.10 and 0.31 Hz). Coherence analysis of the medial lateral movement of the CoM indicated both groups changed frequency of their movement of the CoM to reflect the movement of the trees, albeit at a lower magnitude than scene oscillations. However, healthy controls did not significantly increase variability in peak-to-peak CoM sway, step width variability, or medial-lateral foot placement compared to normal walking, while increases in these variables were observed in PwMS. One explanation for the lack of response in controls could be that scene oscillations included more motion cues and therefore increased the sense of movement via optical flow and motion parallax [27], compared to diminished cues of movement presented by only tree sway. Yet, object motion and visual field movement are processed using separate mechanisms [37]. While increased cognitive load associated with tree sway might have contributed to changes in dynamic balance control in PwMS, we believe a more likely explanation for the observed response to object motion is error in differentiation of object motion from self-motion.
Previous studies in healthy adults have shown that object motion can be mistaken for self-motion due to the activation of common neurons involved in motion processing [46]. Physiologically, visual motion is interpreted and processed across multiple pathways, but most prominently through the connection from visual area 5 (V5) to the medial superior temporal area (MST). The dorsomedial region of MST (MSTd) is associated with processing self-motion, in which the neurons fire in response to contracting, expanding and translational movements within large receptive fields [47]. On the other hand, the lateroventral region of MST (MSTi) responds more strongly motion contrast between the center and periphery within smaller receptive fields and has little response to movement patterns associated with self-motion [47]. For object motion specifically, differences in brightness gradient, shape, and speed are used for motion identification [48]. This could be impaired in PwMS, as low contrast detection has been demonstrated by decreased low contrast letter acuity scores [49] and disrupted contrast perception associated can impact the perception of form from motion [39, 40]. Additionally, demyelination and lesions (reflected by reduced grey matter volume in MS [50] may impact the visual systems processing (such as in the MSTd and MSTi). These combined impairments in visual processing in PwMS could cause object motion to be interpreted as self-motion.
Perceived object and self-motion are obtained by integrating input from visual, somatosensory, and vestibular senses and the resulting perception is used in dynamic balance control. Retinal motion and extraretinal cues are compared to perceived object motion and then self-motion can be determined by comparison to efferent copies of motor commands and afferent information from vestibular and proprioceptive systems [37]. The effects of this integration process on balance have been exemplified in older adults. Thomas and colleagues reported decreased balance control while tracking object movement, which could result from challenges in estimating self-motion during object tracking [51]. Moreover, impairments in somatosensory [2] and vestibular systems [52] in MS likely lead to an increased reliance on the visual system for balance [53]. Together, these effects could cause movements within a visual scene to be mistakenly perceived as self-motion during gait, similar to way in which translations of the visual scene are perceived as changes in self-motion that lead to corrective adjustments in gait [27, 28, 30, 31]. This could suggest that PwMS are more suspectable to misinterpretation of object motion as self-motion.
Our results demonstrated that when scene oscillations and object oscillations were combined, coherence between object oscillation and CoM movement occurred in both groups. This was somewhat unexpected as partial suppression of object motion detection is produced by concurrent self-motion stimuli [54]; consequently, the observer might be expected to disregard discordant object motion cues when judging self-motion [55]. While entrainment to the object motion was reduced somewhat, the results suggest that object motion was, at least partially, interpreted as self-motion in our experiments, as it was not fully suppressed by the presence of simulated self-motion (i.e., scene oscillation). However, the phase coherence results indicate a lead response to object oscillations that was distinctly different from the lag response observed to scene oscillations. This suggests that object and scene movements were being processed differently for the control of gait. An important contributing factor could be the perspective from which motion was viewed. Visual motion interpreted as foreground (i.e., object motion) has been shown to induce a postural response in the opposite direction while motion perceived as background (i.e., scene oscillation) induces postural responses in the same direction as the movement [56]. Alternatively, it is possible that the changes in phasing may be due to the location of the scene reference point relative to the object motion. While participants were instructed to stare straight ahead to reduce effect of reference point as a confounding factor, the movement of the scene relative to the tree could have been interpreted as the reference motion, leading to the opposite sign of the phasing.
Another possible explanation for the increased gait variability seen in PwMS with object motion is that the presence of moving objects increased cognitive load in a population with decreased cognitive processing capacity. PwMS have reduced attentional focus [57] and visuospatial difficulties in adapting to complex environments [58]. Reduced information processing speed [59], visual processing [32], and object recognition [33] in MS may further impair processing of a visual scene and challenge gait stability in PwMS. Thus, object movement might affect dynamic balance control due to an impaired ability to allocate tasks in the prefrontal cortex in PwMS [36], as well as diminished cerebral recruitment with increasing cognitive demand [60]. Previously, it has been demonstrated that an increase in cognitive load can impair gait, including decreases in gait speed [34]. While the movement of objects in the visual field might increase cognitive load, coherence between CoM movement and object movement was still observed in PwMS, suggesting that object motion was incorporated into the control of gait.
Finally, in this study there might have been a “ceiling effect”, in which visually induced changes in gait reach a saturation level as task complexity increases [61], or even a cancellation effect (object and scene movements cancel each other out due to opposite postural responses). This might explain why similar changes in gait were observed in the ‘Scene High’ condition and “Combined’ conditions. The ‘Combined’ condition includes both object and scene motion, yet the resulting kinematic changes are similar to the scene motion conditions. The coherence of the CoM motion to both the object and scene frequencies suggests that both are still incorporated into the response.