This paper introduces a novel low-cost device prototype for the automatic
diagnosis of diseases, utilizing inputted symptoms and personal background. The
engineering goal is to solve the problem of limited healthcare access with a
single device. Diagnosing diseases automatically is an immense challenge, owing
to their variable properties and symptoms. On the other hand, Neural Networks
have developed into a powerful tool in the field of machine learning, one that
is showing to be extremely promising at computing diagnosis even with
inconsistent variables.
In this research, a cheap device was created to allow for straightforward
diagnosis and treatment of human diseases. By utilizing Deep Neural Networks
(DNNs) and Convolutional Neural Networks (CNNs), outfitted on a Raspberry Pi
Zero processor (5),thedeviceisabletodetectupto1537differentdiseasesandconditionsandutilizeaCNNforon−devicevisualdiagnostics.Theusercaninputthesymptomsusingthebuttonsonthedeviceandcantakepicturesusingthesamemechanism.Thealgorithmprocessesinputtedsymptoms,providingdiagnosisandpossibletreatmentoptionsforcommonconditions.Thepurposeofthisworkwastobeabletodiagnosediseasesthroughanaffordableprocessorwithhighaccuracy,asitiscurrentlyachievinganaccuracyof90symptom−baseddiagnoses,and91performancefaraboveanyothertestedsystem,anditsefficiencyandeaseofusewillproveittobeahelpfultoolforpeoplearoundtheworld.Thisdevicecouldpotentiallyprovidelow−costuniversalaccesstovitaldiagnosticsandtreatmentoptions.