Geschreven door studenten die geslaagd zijn Direct beschikbaar na je betaling Online lezen of als PDF Verkeerd document? Gratis ruilen 4,6 TrustPilot
logo-home
Samenvatting

Summary - Computational Neurosciences and Neuroinformatics | 1 Master Neuroscience | | Antwerp University

Beoordeling
-
Verkocht
-
Pagina's
56
Geüpload op
15-06-2026
Geschreven in
2025/2026

Summary based on the slides and explanation from the professors of the course Computational Neurosciences and Neuroinformatics. By learning this summary I got an 18/20 on the exam in january.

Instelling
Vak

Voorbeeld van de inhoud

Computational neuroscience and neuroinformatics
Mathematical models of neuron and synapse activity:
Neuron: 1011 neurons communicating via electric impulses via 10 15 synapses
 Many neuron types bv pyramidal/principal neurons most dominant neurons
Neuron structure:
 Dendrite: recieves input from other neurons
 Soma: integrates input from neurons decides whether to generate an AP
 Axon: propagation of AP to another neuron
AP/spikes: large deviation in electrical potential between the inside and outside of the neuron lasting very short
 Rare events
 Triggered at threshold
Subthreshold potential: little potential changes over time = resting potential
Interneurons: decrease / increase the electrical potential of a neuron

Model: does not represent the brain precisely but can be used to answer a specific research question
¿Neuron ≈ electric circuit ≈ math model
Simple neuron model:
 Explain sub-threshold fluctuations
Passive membrane model:
Resistance capacitance circuit: simple representation of neuron
 Capacitance (C ): charges deposited on the plates and since 2
plates are close together they get deposited on the second
C R plate with an opposite charge
 Resitance ( R )
 Battery (urest )
urest
 Outside current I  splits into I c and I R


UR u−urest
Ohm’s law: I R = → I R=
R R
Coulomb’s law: Q=C∗u = capacitor C stores charge Q depending on the voltage u

dQ C∗du
I C= =
dt dt
u−u rest C∗du
I =I R + I C = +
R dt
RC∗du
 We’re interested in the potential change + simplify formula(¿ R ): =−( u−urest ) + RI
dt
dV du
V =u−urest  = because urest is constant so d urest =0
dt dt
Time constant τ : determines how fast the potential will decay in the absence of a current τ =RC

,  τ ↑: slow decay
 τ ↓: fast decay (fast responding neuron)
dV
τ =−V + RI
dt
Constant current in passive membrane model:
= Step current of constant amplitude

du
Before t 0 : τ =−(u−u rest )
dt
du
Fixed point: when =0 so u=urest
dt


du
After t 0 : τ =−( u−urest ) + RI 0
dt
No potential change (because current is fixed) : u=urest + RI 0

τ : determines how fast urest will jump to urest + RI 0
 Might not reach plateau depending on how slow τ is
 If current is infinitely on you reach urest + RI 0



Function of slope: 1−e−(t−t 0 )/τ



Graph: u ( t )=urest + RI 0∗[ 1−e−(t−t )/ τ ] 0




Pulse current in passive membrane model:
Pulse current: I 0 applied for a very short fraction of time ∆




Until t 0+ ∆ : potential change is the same as in a step current
u ( t 0+ ∆ ) =urest + RI 0 [ 1−e ] ¿ urest + RI 0 [ 1−e−∆/ τ ]
−(t 0+ ∆−t 0 )/ τ


2 3
If ∆ ≪ τ : −x
(Taylor series: e
x x
=1−x + + + …)
2 ! 3!

, [ ( ( ) )]
2
−∆ ∆
u ( t 0+ ∆ ) =urest + RI 0 1− 1− + +…
τ τ


[
 Ignore further terms because they are very small ( ∆ ≪ τ ) : u ( t 0+ ∆ ) =urest + RI 0 1−1+

τ
+0 ∆ ²
]
RI 0 ∆
 u ( t 0+ ∆ ) =urest +
τ




Charge:
Pulse current: very short current pulse doesn’t have the time to pass the resistors so gets reposited
on the capacitors

Charge deposited on capacitors: q=I 0∗∆ (pulse width halved but current doubled -> same charge)

q q
u=urest +  the same for each pulse when the same current is applied
C C


Leaky integrate-and fire model:
Integrate and fire: passive membrane model + condition
 Condition: if u = threshold θ  a spike is fired and u gets reset to ur (= ureset )

Leaky: the potential doesn’t reset to ur instantly after reaching threshold

Step current in leaky integrate and fire model:

urest + RI 2
I2
I 1=I c urest + RI 1 θ




ur
Step current too low:
 Potential will not reach the threshold and remain at urest + RI 0

Critical current I c reached:
 Potential will reach threshold and go back to ur
 Will increase again (because current is constant) and fire spikes repeatedly

Time to reach threshold: is a function of the current magnitude
f

, → As current increases the firing frequency increases



Ic I
Higher current:
 Threshold will be reached faster

I =0 :
 Slope: depends on τ
 Intersection = urest = stable fixed point

Stable fixed point: if the potential is slightly off in either
direction it will aways go back to urest



Step current:
 Constant value added so all values increase
 slope doesn’t change
 Intersection: would be after threshold θ
 No fixed point because it would be after threshold
 will never get reached because potential gets reset
ur to ur when reaching θ

Intersection just after θ :
du
 As u approaches θ the rate of change becomes smaller and smaller
dt
 Small firing frequency
= Type 1 neurons

Non-linear integrate and fire model:
= quadratic integrate and fire model

I =0 :
 Fixed point 1 = stable fixed point: attracts values above and below
du
o Below fixed point 1: is positive so will increase
dt
until fixed point reached
du
o Above fixed point 1: is negative so will decrease
dt
towards the fixed point
 Fixed point 2 = unstable fixed point:
o On fixed point: u will stay the same
du
o Below fixed point: is negative so will decrease
dt
towards stable fixed point
du
o Above fixed point: is positive so u increases until θ reached
dt
= effective threshold

Geschreven voor

Instelling
Studie
Vak

Documentinformatie

Geüpload op
15 juni 2026
Aantal pagina's
56
Geschreven in
2025/2026
Type
SAMENVATTING

Onderwerpen

$11.79
Krijg toegang tot het volledige document:

Verkeerd document? Gratis ruilen Binnen 14 dagen na aankoop en voor het downloaden kun je een ander document kiezen. Je kunt het bedrag gewoon opnieuw besteden.
Geschreven door studenten die geslaagd zijn
Direct beschikbaar na je betaling
Online lezen of als PDF

Maak kennis met de verkoper
Seller avatar
Neurosciencesmajor

Maak kennis met de verkoper

Seller avatar
Neurosciencesmajor Universiteit Antwerpen
Volgen Je moet ingelogd zijn om studenten of vakken te kunnen volgen
Verkocht
-
Lid sinds
2 maanden
Aantal volgers
0
Documenten
13
Laatst verkocht
-
Biomedical sciences student :)

0.0

0 beoordelingen

5
0
4
0
3
0
2
0
1
0

Recent door jou bekeken

Waarom studenten kiezen voor Stuvia

Gemaakt door medestudenten, geverifieerd door reviews

Kwaliteit die je kunt vertrouwen: geschreven door studenten die slaagden en beoordeeld door anderen die dit document gebruikten.

Niet tevreden? Kies een ander document

Geen zorgen! Je kunt voor hetzelfde geld direct een ander document kiezen dat beter past bij wat je zoekt.

Betaal zoals je wilt, start meteen met leren

Geen abonnement, geen verplichtingen. Betaal zoals je gewend bent via iDeal of creditcard en download je PDF-document meteen.

Student with book image

“Gekocht, gedownload en geslaagd. Zo makkelijk kan het dus zijn.”

Alisha Student

Bezig met je bronvermelding?

Maak nauwkeurige citaten in APA, MLA en Harvard met onze gratis bronnengenerator.

Bezig met je bronvermelding?

Veelgestelde vragen